id stringlengths 3 5 | query stringlengths 751 1.38k | answer stringlengths 143 1.63k | text stringlengths 60 688 | label list | token list |
|---|---|---|---|---|---|
cd100 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Shares:B-CAUSE
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6.42.:I-EFFECT | Shares of NASDAQ : XON traded up $ 0.17 on Tuesday , reaching $ 6.42. | [
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cd101 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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cd102 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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0.08.:I-EF... | The company reported ( $ 0.39 ) EPS for the quarter , topping analysts ' consensus estimates of ( $ 0.47 ) by $ 0.08. | [
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cd103 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
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classes.:... | In addition , the Asia Pacific region remains one of the most deep pocketed area , with investors eager to invest across asset classes. According to a PwC report in January , assets under management in the Asia-Pacific region are expected to grow from $ 15.1 trillion in 2017 to $ 16.9 trillion in 2020 , and then nearly... | [
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cd104 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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and... | The mandate to issue refunds comes under a provision in the Affordable Care Act that limits how much companies can keep for overhead and profit. The bulk of the rebates - a total of $ 80.4 million from four companies - will go to those who overpaid for plans purchased on the individual market in 2018 , according to dat... | [
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cd105 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-EFFECT
interactive:I-EFFECT
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cd106 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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110,000:I-E... | The previous biggest UK peacetime repatriation was in 2017 when Monarch Airlines collapsed. The CAA had to organise flights home for 110,000 customers on specially chartered planes. | [
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cd107 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | While:B-EFFECT
companies:I-EFFECT
can:I-EFFECT
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15:I-EFFECT
%:I-EFFECT
tax:I-EFFECT
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by:O
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a:I-CAUSE
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,:I-CAUSE
they:I-CAUSE
have:I-CAUSE
to:I-CAUSE
be:I-CAUSE
mindful:I-CAUSE
that:I-CAUS... | While companies can avail 15 % tax rate by making capital expenditure through a new legal entity , they have to be mindful that this is not a restructuring and even the new company should n't have borrowed money from existing entity or even customers ca n't be moved to the new company. | [
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cd108 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Enerplus:B-CAUSE
Corp:I-CAUSE
(:I-CAUSE
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::I-CAUSE
ERF:I-CAUSE
):I-CAUSE
Announces:I-CAUSE
$:I-CAUSE
0.01:I-CAUSE
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&:I-CAUSE
News:I-CAUSE
for:I-CAUSE
Enerplus:I-CAUSE
Complete:I-CAUSE
the:I-CAUSE
form:I-CAUSE
below:I-CAUSE
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receive:I-CA... | Enerplus Corp ( NYSE : ERF ) Announces $ 0.01 Monthly Dividend Daily Ratings & News for Enerplus Complete the form below to receive the latest headlines and analysts ' recommendations for Enerplus with our free daily email newsletter : Enerplus Corp ( NYSE : ERF ) ( TSE : ERF ) announced a monthly dividend on Tuesday ,... | [
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cd109 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Beasley:B-CAUSE
Broadcast:I-CAUSE
Group:I-CAUSE
Inc:I-CAUSE
(:I-CAUSE
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::I-CAUSE
BBGI:I-CAUSE
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0.05:I-CAUSE
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Beasley:I-CAUSE
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(:I-CAUSE
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::I-CAUSE
BBGI:I-CAUSE
):I-C... | Beasley Broadcast Group Inc ( NASDAQ : BBGI ) Declares $ 0.05 Quarterly Dividend Tweet Beasley Broadcast Group Inc ( NASDAQ : BBGI ) announced a quarterly dividend on Thursday , August 22nd , Zacks reports. Shareholders of record on Monday , September 30th will be paid a dividend of 0.05 per share on Monday , October 7... | [
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cd110 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | JPMorgan:B-CAUSE
Chase:I-CAUSE
&:I-CAUSE
Co.:I-CAUSE
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its:I-CAUSE
holdings:I-CAUSE
in:I-CAUSE
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JPMorgan:I-EFFECT
Chase:I-EFFECT
&:I-... | JPMorgan Chase & Co. grew its holdings in shares of Barnes & Noble Education by 27,914.9 % during the 1st quarter. JPMorgan Chase & Co. now owns 2,925,312 shares of the specialty retailer 's stock valued at $ 12,286,000 after purchasing an additional 2,914,870 shares during the last quarter. | [
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cd111 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | BlackRock:B-CAUSE
Enhanced:I-CAUSE
Global:I-CAUSE
Dividend:I-CAUSE
Trust:I-CAUSE
(:I-CAUSE
NYSE:I-CAUSE
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lessened:I-CAU... | BlackRock Enhanced Global Dividend Trust ( NYSE : BOE ) Holdings Decreased by BB & T Securities LLC BB & T Securities LLC lessened its stake in shares of BlackRock Enhanced Global Dividend Trust ( NYSE : BOE ) by 10.5 % during the second quarter , according to the company in its most recent disclosure with the SEC. The... | [
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cd112 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | (:B-CAUSE
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cd113 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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cd114 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
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thirt... | In the twelve years of operation there have been several hundred individuals involved with the twelve ownership groups , with group number thirteen currently forming. As Howard points out , LandMark groups never own 100 percent of a horse. | [
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cd115 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
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cd118 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Village:B-CAUSE
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cd119 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Previous:B-CAUSE
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cd120 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
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cd126 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Top:B-CAUSE
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cd127 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | By:B-CAUSE
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property:I-CA... | By HeartlandNews - 2 0 Facebook Twitter Pinterest WhatsApp Linkedin ReddIt Telegram Digg In 2014 , Michigan resident Uri Rafaeli underpaid property taxes on a rental unit he owned by $ 8.43. For his oversight , Oakland County seized his property and sold it at auction for $ 24,500. | [
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cd128 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | As:B-CAUSE
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cd129 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | On:B-CAUSE
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cd130 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Analyst:O
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cd131 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Weakened:B-EFFECT
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cd132 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | NYSEARCA:B-CAUSE
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22,38... | NYSEARCA : EUSA traded down $ 0.78 during trading hours on Tuesday , hitting $ 59.39. 23,400 shares of the stock traded hands , compared to its average volume of 22,384. iShares MSCI USA Equal Weighted ETF has a 1 year low of $ 47.02 and a 1 year high of $ 60.89 . | [
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cd134 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | (:B-CAUSE
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September... | ( NYSE : AAN ) declared a quarterly dividend on Thursday , August 8th , Zacks reports. Investors of record on Thursday , September 19th will be paid a dividend of 0.035 per share on Friday , October 4th. This represents a $ 0.14 annualized dividend and a yield of 0.22 % . | [
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cd136 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | On:B-CAUSE
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wil... | On air traffic , work on the Airport Improvement Project Phase II Extension is in progress at the Banjul International Airport , and will last for eighteen months. The project is expected to boost handling capacity to five hundred thousand ( 500,000 ) passengers per annum. | [
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cd137 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Finally:B-CAUSE
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cd138 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
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cd139 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Cowen:B-CAUSE
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the:I-EFF... | Cowen Inc. raised its holdings in Precision BioSciences by 7.5 % in the second quarter. Cowen Inc. now owns 1,083,926 shares of the company 's stock valued at $ 14,362,000 after acquiring an additional 75,361 shares in the last quarter. | [
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cd140 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | This:B-EFFECT
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cd141 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Finally:B-CAUSE
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First... | Finally , First Republic Investment Management Inc. raised its position in iShares Select Dividend ETF by 6.8 % during the second quarter. First Republic Investment Management Inc. now owns 687,447 shares of the company 's stock valued at $ 68,442,000 after purchasing an additional 43,678 shares in the last quarter. | [
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cd142 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | We:B-CAUSE
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sl... | We Company plans to list its shares on the Nasdaq sometime within the next few weeks , even though it reportedly may be forced to slash its valuation by more than half to perhaps as low as $ 10 billion. | [
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cd143 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | SPDR:B-CAUSE
Dow:I-CAUSE
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REIT:I-CAUSE
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(:I-CAUSE
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):I-CAUSE
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):I-CAUSE
dec... | SPDR Dow Jones REIT ETF ( RWR ) To Go Ex-Dividend on September 23rd Tweet SPDR Dow Jones REIT ETF ( NYSEARCA : RWR ) declared a - dividend on Monday , September 23rd , Wall Street Journal reports. Shareholders of record on Tuesday , September 24th will be paid a dividend of 0.8733 per share on Thursday , September 26th... | [
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cd144 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Microsoft:B-EFFECT
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plan... | Microsoft Corp. , up $ 2.55 to $ 141.07 The technology company 's board of directors approved a $ 40 billion stock buyback plan and raised its quarterly dividend. | [
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cd145 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Konekt:B-CAUSE
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final:I-CAUSE... | Konekt Limited ( KKT ) to Issue Final Dividend of $ 0.01 on November 29th Konekt Limited ( ASX : KKT ) announced a final dividend on Friday , September 13th , MarketIndexAU reports. Stockholders of record on Friday , November 29th will be paid a dividend of 0.01 per share on Friday , November 29th. This represents a di... | [
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cd146 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | For:B-CAUSE
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you:I-CAUS... | For example , if your close rate is about 20 % ( you sell policies on about 20 % of your appointments ) , and you want to sell at least 20 policies during AEP , then you should set at least 100 appointments. | [
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cd147 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Photo:B-CAUSE
::I-CAUSE
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range:I-E... | Photo : Mark Wilson via Getty Images The Federal Reserve cut interest rates by a quarter point on Wednesday , bringing the target range for the benchmark Fed Funds rate to 1.75 % - 2 % . | [
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cd148 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Because:B-CAUSE
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$:I... | Because A 's and B 's underlying businesses and their prospects are identical , it also appears that the market is only ascribing $ 750,000 in value to the $ 1 million excess of B 's cash balance versus A's. | [
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cd149 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | by:O
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tha... | by Tyler Durden Sat , 09/14/2019 - 07:35 0 SHARES A new study published by the International Monetary Fund has found that $ 15 trillion of the world 's foreign direct investments are phantom capital - a term used to describe capital that is designed to minimize tax bills of multinational firms . This total makes up 40 ... | [
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cd150 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | (:B-EFFECT
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Gasat:I-EF... | ( PIXABAY / MANILA BULLETIN ) The Court of Tax Appeals ( CTA ) also exempted Rosalinda Valisno Cando , owner of Gasat Express of San Jose Del Monte , Bulacan from paying the BIR more than P2.2 million in tax debts. In an 18-page decision , the court 's First Division dismissed the BIR stand that it sent via registered ... | [
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cd151 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-EFFECT
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respectively:I-E... | The Open Buy Back ( OBB ) and Overnight ( OVN ) opened the week at 7.1 per cent and 8.3 per cent respectively , higher than the previous week 's close of 3.2 per cent and 3.9 per cent as system liquidity remained robust at N354.8 billion. | [
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cd152 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | SPDR:B-CAUSE
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dec... | SPDR Dow Jones REIT ETF ( RWR ) To Go Ex-Dividend on September 23rd Tweet SPDR Dow Jones REIT ETF ( NYSEARCA : RWR ) declared a - dividend on Monday , September 23rd , Wall Street Journal reports. Shareholders of record on Tuesday , September 24th will be paid a dividend of 0.8733 per share on Thursday , September 26th... | [
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cd153 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Overall:B-CAUSE
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cd154 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Invesco:B-CAUSE
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... | The need and demand for affordable family housing is strong in these two communities. All units will be available to households earning less than 60 % of the area median income ( AMI ) , or $ 49,700 for a family of four. | [
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cd156 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Americans:B-CAUSE
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da... | Americans burn about 400 million gallons of gasoline a day , so a 25 cent increase would cost consumers about $ 100 million a day. | [
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cd157 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
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's:... | In the last three months , insiders sold 56,566 shares of company stock worth $ 8,347,056. Insiders own 0.73 % of the company 's stock. | [
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cd158 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | -:O
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40-foot:I... | - Approved an agreement with the Midwest Regional Educational Service Center for an early childhood intervention specialist at a cost of $ 47,740.16 . - Approved Doug Huelskamp Construction to construct a 40-foot by 64-foot barn at a cost of up to $ 60,000. | [
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cd159 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Equities:B-CAUSE
research:I-CAUSE
analysts:I-CAUSE
expect:I-CAUSE
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to:I-CAUSE
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,:O
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company:I-EFFECT
should:I-EFFECT
continue:I-EFFECT
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able:I-EFFECT
to... | Equities research analysts expect Conagra Brands to earn $ 2.34 per share next year , which means the company should continue to be able to cover its $ 0.85 annual dividend with an expected future payout ratio of 36.3 % . | [
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cd160 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Therefore:B-CAUSE
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tax:I-CAUSE
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and:I... | Therefore , the maximum cantonal tax relief is set at 70 % . The capital tax on equity relating to investments , patents , and similar intangibles as well as intercompany loans will also be reduced under the Canton Zurich tax reform. Consequently , taxable equity attributable to qualifying investments , loans to group ... | [
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cd161 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Fiserv:B-CAUSE
agreed:I-CAUSE
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buy:I-CAUSE
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$:I-CAUSE
22:I-CAUSE
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transaction.... | Fiserv agreed back in January to buy First Data , an electronic payments processor , for about $ 22 billion in an all-stock transaction. This is one of the largest mergers in the financial industry in the past few months , creating one of the leading companies in the payments industry . The merger was recently closed a... | [
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cd162 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Metro:B-CAUSE
water:I-CAUSE
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natural:I-CAUSE
area:I-CAUSE
bond:I-CAUSE
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475:I-CAUSE
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bond:I-CAUSE
that:I-CAUSE
sunsets:I-CAUSE
this:I-CAUSE
year:I... | Metro water and natural area bond The regional government entity is asking voters to renew a $ 475 million bond that sunsets this year , which in the past has paid for land purchases and natural restoration in the tri-county area. Property owners would be taxed at 19 cents per $ 1,000 of assessed value if the measure p... | [
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cd163 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | About:B-EFFECT
150,000:I-EFFECT
Brit:I-EFFECT
holidaymakers:I-EFFECT
are:I-EFFECT
currently:I-EFFECT
stranded:I-EFFECT
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(:O
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Brian:B-CAUSE
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general:I-CAUSE
secretary:I-CAUSE
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the:I-CAUSE
British:I-CAUSE
Airline:I-CAUSE
Pilots:I-CAUSE... | About 150,000 Brit holidaymakers are currently stranded abroad ( Image : AFP/Getty Images ) Brian Strutton , general secretary of the British Airline Pilots Association , said : Thomas Cook staff are going through hell as their livelihoods are put on the line they have no idea if they will wake up tomorrow with a job o... | [
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cd164 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | -:B-CAUSE
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are:I-CAUSE
coming:I-CAUSE
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terms:I-CAUSE
(:I-CAUSE
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):I-CAUSE
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it:I-CAUSE
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just:I-CAUSE
mothers:I-CAUSE
who:I-CAUSE
need:I-CAUSE
parental:I-CAUSE
le... | - Employers are coming to terms ( sometimes with legal prodding ) with the fact that it 's not just mothers who need parental leave. Fathers do , too . Exhibit A is JPMorgan Chase , which recently settled a paternity leave case for $ 5 million. | [
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cd165 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Overstock.com:B-EFFECT
Inc.:I-EFFECT
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62:I-EFFECT
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$:I-EFFECT
15.57:I-EFFECT
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Patrick:I-CAUSE
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,:I-CAUSE
sold:I-CAUSE
all:I-CAUSE
his:I-CAUSE
holdings:I-C... | Overstock.com Inc. , down 62 cents to $ 15.57 The company 's founder and former CEO , Patrick Byrne , sold all his holdings in the company. | [
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cd166 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Other:B-CAUSE
key:I-CAUSE
financial:I-CAUSE
targets:I-CAUSE
are:I-CAUSE
for:I-CAUSE
core:I-CAUSE
revenue:I-CAUSE
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€25:I-CAUSE
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$:I-CAUSE
27.5:I-CAUSE
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):I-CAUSE
in:I-CAUSE
2022:I-CAUSE
,:I-CAUSE
adjusted:I-CAUSE
costs:I-CAUSE
of:I-CAUSE
€17:I-CAUSE
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(:I-C... | Other key financial targets are for core revenue of €25 billion ( $ 27.5 billion ) in 2022 , adjusted costs of €17 billion ( $ 18.7 billion ) and a return on tangible equity ( RoTE ) of 8 % . This means that Deutsche Bank expects to increase revenue at about 2 % per year during 2019-2022 , reduce costs by 7 % per year ... | [
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cd167 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Companies:B-CAUSE
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are:I-CAUSE
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automating:I-CAUSE
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offshoring:I-CAUSE
them.:I-CAUSE
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$:I-EFFECT
160:I-EFFECT
bil... | Companies in advanced economies are already automating some customer support services rather than offshoring them. This could reduce the $ 160 billion global market for business process outsourcing ( BPO ) , now one of the most heavily traded service sectors. | [
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cd168 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
Civil:I-CAUSE
Aviation:I-CAUSE
Authority:I-CAUSE
said:I-CAUSE
Thomas:I-CAUSE
Cook:I-CAUSE
has:I-CAUSE
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,:O
its:B-EFFECT
four:I-EFFECT
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grounded:I-EFFECT
,:I-EFFECT
and:I-EFFECT
its:I-EFFECT
21,000:I-EFFECT
employees:I-EFFECT
in:I-EFFEC... | The Civil Aviation Authority said Thomas Cook has ceased trading , its four airlines will be grounded , and its 21,000 employees in 16 countries , including 9,000 in the U.K. , will lose their jobs. | [
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cd169 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-EFFECT
terms:I-EFFECT
of:I-EFFECT
loans:I-EFFECT
and:I-EFFECT
advances:I-EFFECT
,:I-EFFECT
Fidelity:I-EFFECT
was:I-EFFECT
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close:I-EFFECT
to:I-EFFECT
hitting:I-EFFECT
N1.0trillion:I-EFFECT
as:I-EFFECT
of:I-EFFECT
half:I-EFFECT
year:I-EFFECT
with:O
deposits:B-CAUSE
rising:I-CAUSE
above:I-CAUSE
N1.0tril... | In terms of loans and advances , Fidelity was very close to hitting N1.0trillion as of half year with deposits rising above N1.0trillion and total assets of N1.94trillion. | [
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cd170 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-CAUSE
firm:I-CAUSE
also:I-CAUSE
recently:I-CAUSE
disclosed:I-CAUSE
a:I-CAUSE
-:I-CAUSE
dividend:I-CAUSE
,:I-CAUSE
which:I-CAUSE
will:I-CAUSE
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paid:I-CAUSE
on:I-CAUSE
Monday:I-CAUSE
,:I-CAUSE
September:I-CAUSE
30th.:I-CAUSE
Investors:I-EFFECT
of:I-EFFECT
record:I-EFFECT
on:I-EFFECT
Wednesday:I-EFFECT
,:I... | The firm also recently disclosed a - dividend , which will be paid on Monday , September 30th. Investors of record on Wednesday , September 25th will be paid a $ 0.9558 dividend. | [
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cd171 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Let:B-CAUSE
's:I-CAUSE
say:I-CAUSE
Shirley:I-CAUSE
reduced:I-CAUSE
her:I-CAUSE
assets:I-CAUSE
of:I-CAUSE
$:I-CAUSE
165,000:I-CAUSE
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a:I-CAUSE
gift:I-CAUSE
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$:I-CAUSE
10,000:I-CAUSE
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pre-paying:I-CAUSE
her:I-CAUSE
funeral:I-CAUSE
expenses:I-CAUSE
for:I-CAUSE
$:I-CAUSE
15,000.:I-CAUSE
... | Let 's say Shirley reduced her assets of $ 165,000 through a gift of $ 10,000 and pre-paying her funeral expenses for $ 15,000. Her DAC would reduce from $ 55 a day to $ 43 a day ( a saving of just over $ 4,300 a year ) . Her equivalent lump sum would reduce by almost $ 88,000 ! | [
"B-CAUSE",
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cd172 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | As:B-CAUSE
it:I-CAUSE
reaches:I-CAUSE
the:I-CAUSE
tipping:I-CAUSE
point:I-CAUSE
of:I-CAUSE
having:I-CAUSE
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millionaires:I-CAUSE
than:I-CAUSE
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other:I-CAUSE
country:I-CAUSE
in:I-CAUSE
the:I-CAUSE
world:I-CAUSE
,:I-CAUSE
China:I-CAUSE
now:I-CAUSE
represents:I-CAUSE
roughly:I-CAUSE
a:I-CAUSE
third:I... | As it reaches the tipping point of having more millionaires than any other country in the world , China now represents roughly a third of the global market for luxury goods. In 2016 , 40 percent more cars were sold in China than in all of Europe , and China also accounts for 40 percent of global textiles and apparel co... | [
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"I-CAUSE",
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cd173 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | After:B-CAUSE
combining:I-CAUSE
the:I-CAUSE
proposed:I-CAUSE
St.:I-CAUSE
Paul:I-CAUSE
,:I-CAUSE
St.:I-CAUSE
Paul:I-CAUSE
Port:I-CAUSE
Authority:I-CAUSE
,:I-CAUSE
Ramsey:I-CAUSE
County:I-CAUSE
and:I-CAUSE
St.:I-CAUSE
Paul:I-CAUSE
School:I-CAUSE
District:I-CAUSE
levies:I-CAUSE
,:I-CAUSE
on:I-CAUSE
top:I-CAUSE
of:I-CAUSE
... | After combining the proposed St. Paul , St. Paul Port Authority , Ramsey County and St. Paul School District levies , on top of other special taxing districts , the owner of a median-value St. Paul home - $ 199,800 - would see their property taxes rise $ 356 , or 12.6 percent. | [
"B-CAUSE",
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"I-C... | [
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cd174 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | As:B-CAUSE
discussed:I-CAUSE
in:I-CAUSE
this:I-CAUSE
Assembly:I-CAUSE
,:I-CAUSE
in:I-CAUSE
October:I-CAUSE
2018:I-CAUSE
,:I-CAUSE
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European:I-CAUSE
Union:I-CAUSE
(:I-CAUSE
EU:I-CAUSE
):I-CAUSE
and:I-CAUSE
the:I-CAUSE
Republic:I-CAUSE
of:I-CAUSE
The:I-CAUSE
Gambia:I-CAUSE
signed:I-CAUSE
a:I-CAUSE
six-year:I-C... | As discussed in this Assembly , in October 2018 , The European Union ( EU ) and the Republic of The Gambia signed a six-year agreement to allow EU vessels to fish in Gambian waters. It offers the vessels to fish up to three thousand , three hundred ( 3,300 ) tonnes of tuna and tuna-like species , and seven hundred and ... | [
"B-CAUSE",
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"I-CAUSE",
"I-CAUSE",
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"I-CAUSE",
"I-CAUSE",
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"I-CAUSE",
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"I-C... | [
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cd175 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | If:B-CAUSE
she:I-CAUSE
sells:I-CAUSE
it:I-CAUSE
before:I-CAUSE
6:I-CAUSE
April:I-CAUSE
2020:I-CAUSE
,:O
she:B-EFFECT
will:I-EFFECT
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entitled:I-EFFECT
to:I-EFFECT
private:I-EFFECT
residence:I-EFFECT
relief:I-EFFECT
of:I-EFFECT
£60,000:I-EFFECT
(:I-EFFECT
30/48:I-EFFECT
x:I-EFFECT
£96,000:I-EFFECT
):I-EFFECT
.... | If she sells it before 6 April 2020 , she will be entitled to private residence relief of £60,000 ( 30/48 x £96,000 ) . | [
"B-CAUSE",
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"I-CAUSE",
"I-CAUSE",
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cd176 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | September:B-CAUSE
18:I-CAUSE
,:I-CAUSE
2019:I-CAUSE
By:I-CAUSE
::I-CAUSE
Spencer:I-CAUSE
Israel:I-CAUSE
Saturday:I-CAUSE
's:I-CAUSE
drone:I-CAUSE
strikes:I-CAUSE
against:I-CAUSE
Saudi:I-CAUSE
Aramco:I-CAUSE
oil:I-CAUSE
facilities:I-CAUSE
in:I-CAUSE
Abqaiq:I-CAUSE
and:I-CAUSE
Khurais:I-CAUSE
has:I-CAUSE
given:I-CAUSE
th... | September 18 , 2019 By : Spencer Israel Saturday 's drone strikes against Saudi Aramco oil facilities in Abqaiq and Khurais has given the oil market a shock the likes of which it has n't seen in years , and the ramifications are heavy. Five percent of the world 's daily oil output has been disrupted , or 5.7 million ba... | [
"B-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
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"I-CAUSE",
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"I-CAUSE",
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"I-CAUSE",
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"I-C... | [
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cd177 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Many:B-CAUSE
of:I-CAUSE
Tunisia:I-CAUSE
's:I-CAUSE
sacred:I-CAUSE
cows:I-CAUSE
have:I-CAUSE
fallen:I-CAUSE
,:I-CAUSE
from:I-CAUSE
technocrat:I-CAUSE
Prime:I-CAUSE
Minister:I-CAUSE
Youssef:I-CAUSE
Chahed:I-CAUSE
to:I-CAUSE
Defense:I-CAUSE
Minister:I-CAUSE
Abdelkarim:I-CAUSE
Zbidi:I-CAUSE
and:I-CAUSE
moderate:I-CAUSE
Isl... | Many of Tunisia 's sacred cows have fallen , from technocrat Prime Minister Youssef Chahed to Defense Minister Abdelkarim Zbidi and moderate Islamist Ennahda 's Abdelfattah Mourou , all of whom are perceived as having presided over the country 's gradual decline and fall. I want the government to provide jobs and money... | [
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"I-CAUSE",
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"... |
cd178 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Citing:B-EFFECT
tax:I-EFFECT
avoidance:I-EFFECT
as:I-EFFECT
another:I-EFFECT
form:I-EFFECT
of:I-EFFECT
illicit:I-EFFECT
financial:I-EFFECT
flow:I-EFFECT
,:I-EFFECT
he:I-EFFECT
quoted:I-EFFECT
the:I-EFFECT
Tax:I-EFFECT
Justice:I-EFFECT
Network:I-EFFECT
and:I-EFFECT
the:I-EFFECT
International:I-EFFECT
Monetary:I-EFFECT
F... | Citing tax avoidance as another form of illicit financial flow , he quoted the Tax Justice Network and the International Monetary Fund to have estimated over $ 200 billion per year as being lost by developing countries when multinational enterprises do not pay taxes in the countries where they made the profit. | [
"B-EFFECT",
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"I-EFFEC... | [
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cd179 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-EFFECT
mobile:I-EFFECT
subscriber:I-EFFECT
base:I-EFFECT
of:I-EFFECT
Reliance:I-EFFECT
Jio:I-EFFECT
stood:I-EFFECT
at:I-EFFECT
339.79:I-EFFECT
million:I-EFFECT
at:I-EFFECT
the:I-EFFECT
end:I-EFFECT
of:I-EFFECT
July:I-EFFECT
as:O
the:B-CAUSE
company:I-CAUSE
added:I-CAUSE
a:I-CAUSE
healthy:I-CAUSE
number:I-CAUSE
of... | The mobile subscriber base of Reliance Jio stood at 339.79 million at the end of July as the company added a healthy number of users. | [
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cd180 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Based:B-CAUSE
upon:I-CAUSE
the:I-CAUSE
most:I-CAUSE
recent:I-CAUSE
annualized:I-CAUSE
dividend:I-CAUSE
rate:I-CAUSE
of:I-CAUSE
2.12/share:I-CAUSE
,:O
we:B-EFFECT
calculate:I-EFFECT
that:I-EFFECT
INTU:I-EFFECT
has:I-EFFECT
a:I-EFFECT
current:I-EFFECT
yield:I-EFFECT
of:I-EFFECT
approximately:I-EFFECT
0.79:I-EFFECT
%:I-EF... | Based upon the most recent annualized dividend rate of 2.12/share , we calculate that INTU has a current yield of approximately 0.79 % . | [
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cd181 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Firm:B-CAUSE
Capital:I-CAUSE
Mortgage:I-CAUSE
Investment:I-CAUSE
Corp:I-CAUSE
(:I-CAUSE
TSE:I-CAUSE
::I-CAUSE
FC:I-CAUSE
):I-CAUSE
to:I-CAUSE
Issue:I-CAUSE
Monthly:I-CAUSE
Dividend:I-CAUSE
of:I-CAUSE
$:I-CAUSE
0.08:I-CAUSE
Tweet:I-CAUSE
Firm:I-CAUSE
Capital:I-CAUSE
Mortgage:I-CAUSE
Investment:I-CAUSE
Corp:I-CAUSE
(:I-C... | Firm Capital Mortgage Investment Corp ( TSE : FC ) to Issue Monthly Dividend of $ 0.08 Tweet Firm Capital Mortgage Investment Corp ( TSE : FC ) declared a monthly dividend on Friday , September 27th , TickerTech reports. Investors of record on Tuesday , October 15th will be given a dividend of 0.078 per share on Tuesda... | [
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"I-C... | [
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cd182 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
contrast:I-CAUSE
,:I-CAUSE
Bharti:I-CAUSE
Airtel:I-CAUSE
(:I-CAUSE
including:I-CAUSE
Tata:I-CAUSE
Teleservices:I-CAUSE
numbers:I-CAUSE
):I-CAUSE
lost:I-CAUSE
2.58:I-CAUSE
million:I-CAUSE
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cd183 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | QRC:B-EFFECT
's:I-EFFECT
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$:I-E... | QRC 's offer price represents a steep 54.5 per cent discount from DLF 's volume-weighted average price ( VWAP ) of S $ 0.178 for the month up to Sept 5 , and a narrower 29.6 per cent discount to the one-year VWAP and 4.71 per cent discount to the six-month VWAP. The offer was triggered on Friday , after QRC entered an ... | [
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cd184 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Let:B-CAUSE
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you:... | Let 's say you have $ 1,000 in your savings account at a brick-and-mortar bank earning the average interest. After five years , you 'd earn about $ 14. | [
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cd185 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Activity:B-CAUSE
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recorded:I-EFFECT
a:I-EFFECT
fortnight:I-EFFECT
ago.:I-EFFECT | Activity level in the I & E Window fell 1.8 per cent to $ 1.07 billion from $ 1.08 billion recorded a fortnight ago. | [
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cd186 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Openwork:B-EFFECT
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cd187 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Image:B-CAUSE
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M:I-E... | Image by author data source : Lockheed Martin SEC filings The $ 20.05 B spent on buybacks have reduced the share count from 388.9 M in FY 2009 to 286.8 M in FY 2018. | [
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cd188 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Another:B-CAUSE
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billion.:I-EFFECT | Another high-tax state , Connecticut , had the largest income loss relative to its overall economy - at $ 2.6 billion. | [
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cd189 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | For:B-CAUSE
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age:I-CAUSE
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2,209:I-EFFECT
,:O
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$:... | For those retiring early , at age 62 , the maximum drops to $ 2,209 , while those who wait until age 70 - the latest you can defer - can collect a benefit of $ 3,770 per month . | [
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cd190 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | -:O
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-:O
0:O
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4:O
-:O
0:O
-:O
2.57:O
-:O
Jumia:O
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Competitors:O
-:O
202:O
-:O
802:O
-:O
2410:O
-:O
82:O
-:O
2.68:O
Jumia:B-CAUSE
Technologies:I-CAUSE
current... | - - Sell Ratings - Hold Ratings - Buy Ratings - Strong Buy Ratings - Rating Score - Jumia Technologies - 0 - 3 - 4 - 0 - 2.57 - Jumia Technologies Competitors - 202 - 802 - 2410 - 82 - 2.68 Jumia Technologies currently has a consensus target price of $ 30.00 , indicating a potential upside of 170.03 % . | [
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cd191 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Ventas:B-EFFECT
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78.1:I-EFFECT
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future:I-C... | Ventas has a payout ratio of 78.1 % indicating that its dividend is currently covered by earnings , but may not be in the future if the company 's earnings fall. | [
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cd192 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Gold:B-EFFECT
also:I-EFFECT
saw:I-EFFECT
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15:I-EFFECT
count:I-EFFECT
increase:I-EFFECT
to:I-EFFECT
+11:I-EFFECT
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19:I-EFFECT
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24:I-EFFECT
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of:I-EFFECT
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as:O
the:B-CAUSE
price:I-CAUSE
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gold:I-CAUSE
was:I-CAUSE
at:I-CAUSE
or:I-CAUSE
bel... | Gold also saw its 15 count increase to +11 from 19 to 24 June of this year as the price of gold was at or below $ 1419. | [
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cd193 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | In:B-CAUSE
recent:I-CAUSE
years:I-CAUSE
,:I-CAUSE
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and:I-CAUSE
popularity:I-CAUSE
among:I-CAUSE
young:I-CAUSE
female:I-CAUSE
shoppers:I-CAUSE
,:I-CAUSE
at:I-CAUSE
a:I-CAUSE
time:I-CAUSE
when:I-CAUSE
J.Crew:I-CAUSE
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struggled:I-CAUSE
with:... | In recent years , it has enjoyed breakneck growth and popularity among young female shoppers , at a time when J.Crew has struggled with declining sales , turnover in the C-suite and a brand identity crisis. In 2018 , Madewell 's revenues grew by 32 % to $ 614 million , according to a filing . The company is also profit... | [
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cd194 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | The:B-EFFECT
DGR:I-EFFECT
in:I-EFFECT
the:I-EFFECT
Roth:I-EFFECT
is:I-EFFECT
lower:I-EFFECT
at:I-EFFECT
5.4:I-EFFECT
%:I-EFFECT
due:O
primarily:O
to:O
its:B-CAUSE
holding:I-CAUSE
of:I-CAUSE
REITs.:I-CAUSE | The DGR in the Roth is lower at 5.4 % due primarily to its holding of REITs. | [
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cd195 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Laboratory:B-EFFECT
information:I-EFFECT
management:I-EFFECT
systems:I-EFFECT
(:I-EFFECT
LIMS:I-EFFECT
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segment:I-EFFECT
will:I-EFFECT
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significant:I-EFFECT
growth:I-EFFECT
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8.2:I-EFFECT
%:I-EFFECT
CAGR:I-EFFECT
during:I-EFFECT
the:I-EFFECT
forecast:I-EFFECT
period:I-EFFECT
due:O
to:O
... | Laboratory information management systems ( LIMS ) segment will show significant growth of 8.2 % CAGR during the forecast period due to high adoption rate. | [
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] |
cd196 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | PLC:B-CAUSE
(:I-CAUSE
NYSE:I-CAUSE
::I-CAUSE
ETN:I-CAUSE
):I-CAUSE
insider:I-CAUSE
Ken:I-CAUSE
D.:I-CAUSE
Semelsberger:I-CAUSE
sold:I-CAUSE
17,000:I-CAUSE
shares:I-CAUSE
of:I-CAUSE
the:I-CAUSE
company:I-CAUSE
's:I-CAUSE
stock:I-CAUSE
in:I-CAUSE
a:I-CAUSE
transaction:I-CAUSE
dated:I-CAUSE
Friday:I-CAUSE
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Septem... | PLC ( NYSE : ETN ) insider Ken D. Semelsberger sold 17,000 shares of the company 's stock in a transaction dated Friday , September 13th. The shares were sold at an average price of $ 88.69 , for a total transaction of $ 1,507,730.00 . Following the transaction , the insider now owns 69,936 shares in the company , valu... | [
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"I-CAUSE",
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cd197 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | Repay:B-CAUSE
has:I-CAUSE
a:I-CAUSE
consensus:I-CAUSE
price:I-CAUSE
target:I-CAUSE
of:I-CAUSE
$:I-CAUSE
15.00:I-CAUSE
,:O
suggesting:B-EFFECT
a:I-EFFECT
potential:I-EFFECT
upside:I-EFFECT
of:I-EFFECT
9.81:I-EFFECT
%:I-EFFECT
.:I-EFFECT | Repay has a consensus price target of $ 15.00 , suggesting a potential upside of 9.81 % . | [
"B-CAUSE",
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] | [
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"."
] |
cd198 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | £14m:O
pension:O
schemes:O
shut:O
down:O
leaving:O
229:O
people:O
with:O
missing:O
pension:O
pot:O
Two:B-EFFECT
pension:I-EFFECT
schemes:I-EFFECT
worth:I-EFFECT
£14m:I-EFFECT
have:I-EFFECT
been:I-EFFECT
wound:I-EFFECT
up:I-EFFECT
by:I-EFFECT
the:I-EFFECT
high:I-EFFECT
court:I-EFFECT
after:O
an:B-CAUSE
investigation:I-C... | £14m pension schemes shut down leaving 229 people with missing pension pot Two pension schemes worth £14m have been wound up by the high court after an investigation revealed they had invested members ' money in illiquid , high-risk and unsuitable investments. | [
"O",
"O",
"O",
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cd199 | Your job in this task is to perform sequence labeling on a provided text section, marking the chunks that represent the cause of an event and the effects that result from it. For each token in the text, assign a label to indicate its role in representing cause or effect. The labels you should use are 'B-CAUSE', 'I-CAUS... | (:B-CAUSE
NYSE:I-CAUSE
::I-CAUSE
CHD:I-CAUSE
):I-CAUSE
CEO:I-CAUSE
Matthew:I-CAUSE
Farrell:I-CAUSE
bought:I-CAUSE
7,000:I-CAUSE
shares:I-CAUSE
of:I-CAUSE
the:I-CAUSE
company:I-CAUSE
's:I-CAUSE
stock:I-CAUSE
in:I-CAUSE
a:I-CAUSE
transaction:I-CAUSE
dated:I-CAUSE
Monday:I-CAUSE
,:I-CAUSE
September:I-CAUSE
16th.:I-CAUSE
T... | ( NYSE : CHD ) CEO Matthew Farrell bought 7,000 shares of the company 's stock in a transaction dated Monday , September 16th. The shares were acquired at an average cost of $ 71.32 per share , for a total transaction of $ 499,240.00 . Following the completion of the transaction , the chief executive officer now owns 1... | [
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"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
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"I-CAUSE",
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"I-CAUSE",
"I-CAUSE",
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"I-CAUSE",
"O",... | [
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"The",
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"at",
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