id stringlengths 3 5 | query stringlengths 751 1.38k | answer stringlengths 143 1.63k | text stringlengths 60 688 | label sequence | token sequence |
|---|---|---|---|---|---|
cd0 | 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... | Around:B-EFFECT
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the:B-CAUSE
178-year-old:I-CAUSE
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ceased:I-CA... | Around 21,000 employees , 9,000 of whom are employed in the UK , are to be made redundant after the 178-year-old company ceased trading and went into compulsory liquidation this morning. | [
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cd1 | 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... | REUTERS/Aly:O
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have:I-CAUSE
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$:I-CAUSE
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buy:I-CAUSE
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other:... | REUTERS/Aly Song/File Photo ( Reuters ) - Tencent Holdings Ltd and private equity partner Hammer Capital have offered $ 16 per share to buy out the other shareholders in Chinese car comparison website Bitauto Holdings Ltd , valuing the company at just under $ 1.2 billion. | [
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cd2 | 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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of:I-CAUSE
America:I-CAUSE
reduced:I-CAUSE
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price:I-CAUSE
target:I-CAUSE
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Intrexon:I-CAUSE
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set:I-CAUSE
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underperform:I-CAUSE
rating:I-CAUSE
for:I-CAUSE
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co... | Finally , Bank of America reduced their price target on Intrexon from $ 7.00 to $ 6.00 and set an underperform rating for the company in a research report on Friday , August 9th. One equities research analyst has rated the stock with a sell rating , three have assigned a hold rating and two have given a buy rating to t... | [
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cd3 | 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... | RWR:B-CAUSE
traded:I-CAUSE
up:I-CAUSE
$:I-CAUSE
0.29:I-CAUSE
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trading:I-CAUSE
on:I-CAUSE
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103.68.:I-EFFECT | RWR traded up $ 0.29 during trading on Wednesday , hitting $ 103.68. | [
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cd4 | 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... | More:B-EFFECT
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UK.:I-CAUSE | More than 20,000 jobs across the group are at risk if it collapses , with 9,000 of those jobs in the UK. | [
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cd5 | 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... | Hubbard:B-CAUSE
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added:... | Hubbard , who has warned consistently about the dangers of debt , was also an architect of George W. Bush 's tax cuts , which added an estimated three hundred billion dollars per year to the deficit. | [
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cd6 | 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... | GTLS:B-CAUSE
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.:O | GTLS traded up $ 1.91 during trading on Wednesday , hitting $ 70.69. 8,663 shares of the stock traded hands , compared to its average volume of 332,566 . | [
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cd7 | 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
of:I-CAUSE
BBGI:I-CAUSE
stock:I-CAUSE
traded:I-CAUSE
up:I-CAUSE
$:I-CAUSE
0.06:I-CAUSE
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Wednesday:I-CAUSE
,:O
hitting:B-EFFECT
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3.13.:I-EFFECT | Shares of BBGI stock traded up $ 0.06 during mid-day trading on Wednesday , hitting $ 3.13. | [
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cd8 | 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... | Spark:B-EFFECT
New:I-EFFECT
Zealand:I-EFFECT
fell:I-EFFECT
0.9:I-EFFECT
percent:I-EFFECT
,:I-EFFECT
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4:I-EFFECT
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4.48:I-EFFECT
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shedding:B-CAUSE
rights:I-CAUSE
to:I-CAUSE
12.5:I-CAUSE
cents:I-CAUSE
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dividends.:I-CAUSE | Spark New Zealand fell 0.9 percent , or 4 cents , to $ 4.48 after shedding rights to 12.5 cents of dividends. | [
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cd9 | 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
school:I-CAUSE
board:I-CAUSE
decided:I-CAUSE
to:I-CAUSE
ask:I-CAUSE
voters:I-CAUSE
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rate:I-CAUSE
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1.99:I-CAUSE
per:I-CAUSE
$:I-CAUSE
1,000:I-CAUSE
of:I-CAUSE
assessed:I-CAUSE
property:I-CAUSE
value.:I... | The school board decided to ask voters to renew the levy at the current rate of $ 1.99 per $ 1,000 of assessed property value. Officials estimate the levy will cost a typical home in the district with an assessed value of $ 215,000 about $ 430 per year. | [
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cd10 | 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... | Envestnet:B-CAUSE
Asset:I-CAUSE
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Inc.:I-CAUSE
grew:I-CAUSE
its:I-CAUSE
stake:I-CAUSE
in:I-CAUSE
Vanguard:I-CAUSE
High:I-CAUSE
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ETF:I-CAUSE
by:I-CAUSE
12.4:I-CAUSE
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the:I-CAUSE
2nd:I-CAUSE
quarter.:I-CAUSE
Envestnet:I-EFFECT
Asset:I-EFFECT
Management:I-... | Envestnet Asset Management Inc. grew its stake in Vanguard High Dividend Yield ETF by 12.4 % in the 2nd quarter. Envestnet Asset Management Inc. now owns 1,526,580 shares of the company 's stock worth $ 133,393,000 after buying an additional 168,937 shares in the last quarter. | [
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cd11 | 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... | Since:B-CAUSE
the:I-CAUSE
1990s:I-CAUSE
,:I-CAUSE
China:I-CAUSE
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made:I-CAUSE
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investing:I-CAUSE
billions:I-CAUSE
of:I-CAUSE
dollars:I-CAUSE
in:I-CAUSE
several:I-CAUSE
companies:I-CAU... | Since the 1990s , China has made numerous efforts to design and fabricate its own chips investing billions of dollars in several companies but mostly not succeeded. China imports about 80 % of its microchip requirement. In 2017 , it spent $ 260 billion on imports of semiconductors and chips , more than its imports of c... | [
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cd12 | 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... | Dilution:B-EFFECT
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6:I-EFFECT
April:I-EFFECT
2019:I-EFFECT
those:I-EFFECT
shareholders:I-EFFECT
whose:I-EFFECT
holding:I-EFFECT
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their:I-EFFECT
company:I-EFFECT
is:I-EFFECT
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the:I-EFFECT
normal:I-EFFECT
5:I-EFFECT
%:I-EFFECT
qualifying:I-EFFECT
level:I-EFFECT
as:O
... | Dilution From 6 April 2019 those shareholders whose holding in their company is reduced below the normal 5 % qualifying level as a result of raising funds for commercial purposes by means of an issue of new shares may still obtain ER. | [
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cd13 | 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
CAA:I-CAUSE
said:I-CAUSE
71:I-CAUSE
flights:I-CAUSE
had:I-CAUSE
operated:I-CAUSE
on:I-CAUSE
Wednesday:I-CAUSE
,:O
bringing:B-EFFECT
back:I-EFFECT
around:I-EFFECT
17,000:I-EFFECT
passengers.:I-EFFECT | The CAA said 71 flights had operated on Wednesday , bringing back around 17,000 passengers. | [
"B-CAUSE",
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"I-CAUSE",
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"I-CAUSE",
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"O",
"B-EFFECT",
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] | [
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"Wednesday",
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] |
cd14 | 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... | WisdomTree:B-CAUSE
U.S.:I-CAUSE
Dividend:I-CAUSE
ex-Financials:I-CAUSE
Fund:I-CAUSE
(:I-CAUSE
NYSEARCA:I-CAUSE
::I-CAUSE
DTN:I-CAUSE
):I-CAUSE
declared:I-CAUSE
a:I-CAUSE
-:I-CAUSE
dividend:I-CAUSE
on:I-CAUSE
Tuesday:I-CAUSE
,:I-CAUSE
September:I-CAUSE
24th:I-CAUSE
,:I-CAUSE
Wall:I-CAUSE
Street:I-CAUSE
Journal:I-CAUSE
r... | WisdomTree U.S. Dividend ex-Financials Fund ( NYSEARCA : DTN ) declared a - dividend on Tuesday , September 24th , Wall Street Journal reports. Stockholders of record on Wednesday , September 25th will be given a dividend of 0.32 per share on Friday , September 27th . This represents a dividend yield of 3.6 % . | [
"B-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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"O",... | [
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cd15 | 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... | She:B-CAUSE
said:I-CAUSE
RoDTEP:I-CAUSE
will:I-CAUSE
replace:I-CAUSE
the:I-CAUSE
existing:I-CAUSE
incentive:I-CAUSE
schemes:I-CAUSE
and:I-CAUSE
will:I-CAUSE
more:I-CAUSE
than:I-CAUSE
adequately:I-CAUSE
incentivise:I-CAUSE
exporters:I-CAUSE
than:I-CAUSE
the:I-CAUSE
existing:I-CAUSE
schemes:I-CAUSE
put:I-CAUSE
together.:... | She said RoDTEP will replace the existing incentive schemes and will more than adequately incentivise exporters than the existing schemes put together. The minister said the revenue foregone towards the scheme is projected at Rs 50,000 crore. | [
"B-CAUSE",
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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",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-EFFECT",
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"I... | [
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... |
cd16 | 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... | Contrary:B-EFFECT
to:I-EFFECT
popular:I-EFFECT
perception:I-EFFECT
,:I-EFFECT
only:I-EFFECT
about:I-EFFECT
18:I-EFFECT
percent:I-EFFECT
of:I-EFFECT
global:I-EFFECT
goods:I-EFFECT
trade:I-EFFECT
is:I-EFFECT
now:I-EFFECT
driven:I-EFFECT
by:I-EFFECT
labor-cost:I-EFFECT
arbitrage.:I-EFFECT
Three:I-CAUSE
factors:I-CAUSE
exp... | Contrary to popular perception , only about 18 percent of global goods trade is now driven by labor-cost arbitrage. Three factors explain these changes : growing demand in China and the rest of the developing world , which enables these countries to consume more of what they produce the growth of more comprehensive dom... | [
"B-EFFECT",
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"I-EFFECT",
"I-EFFECT",
"I-EFFECT",
"I-CAUSE",
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... | [
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cd17 | 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... | Money:B-CAUSE
taken:I-CAUSE
out:I-CAUSE
prior:I-CAUSE
to:I-CAUSE
age:I-CAUSE
65:I-CAUSE
and:I-CAUSE
used:I-CAUSE
for:I-CAUSE
anything:I-CAUSE
but:I-CAUSE
health-care:I-CAUSE
expenses:I-CAUSE
are:O
subject:O
not:B-EFFECT
only:I-EFFECT
to:I-EFFECT
income:I-EFFECT
taxes:I-EFFECT
,:I-EFFECT
but:I-EFFECT
a:I-EFFECT
20:I-EFF... | Money taken out prior to age 65 and used for anything but health-care expenses are subject not only to income taxes , but a 20 % penalty , too. | [
"B-CAUSE",
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"I-CAUSE",
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] |
cd18 | 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... | Cortis:B-EFFECT
had:I-EFFECT
invested:I-EFFECT
€60,000:I-EFFECT
in:I-EFFECT
the:I-EFFECT
venture:I-EFFECT
after:O
some:B-CAUSE
convincing:I-CAUSE
from:I-CAUSE
Portelli.:I-CAUSE | Cortis had invested €60,000 in the venture after some convincing from Portelli. | [
"B-EFFECT",
"I-EFFECT",
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"I-EFFECT",
"O",
"B-CAUSE",
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] | [
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"Portelli."
] |
cd19 | 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
Pte:I-EFFECT
Ltd:I-EFFECT
,:I-EFFECT
a:I-EFFECT
consultancy:I-EFFECT
solely:I-EFFECT
owned:I-EFFECT
by:I-EFFECT
Enomoto:I-EFFECT
Hiroyuki:I-EFFECT
,:I-EFFECT
has:I-EFFECT
launched:I-EFFECT
a:I-EFFECT
mandatory:I-EFFECT
takeover:I-EFFECT
offer:I-EFFECT
for:I-EFFECT
Catalist-listed:I-EFFECT
DLF:I-EFFECT
Hold... | QRC Pte Ltd , a consultancy solely owned by Enomoto Hiroyuki , has launched a mandatory takeover offer for Catalist-listed DLF Holdings , offering S $ 0.081 for each share it does not already own , the engineering firm announced in a Friday bourse filing after market close. The offeror intends to maintain DLF 's listin... | [
"B-EFFECT",
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"I-EFFECT",
"I-EFFEC... | [
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cd20 | 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
2019:I-CAUSE
and:I-CAUSE
onwards:I-CAUSE
,:I-CAUSE
the:I-CAUSE
speculation:I-CAUSE
and:I-CAUSE
vacancy:I-CAUSE
tax:I-CAUSE
rate:I-CAUSE
will:I-CAUSE
vary:I-CAUSE
,:I-CAUSE
depending:I-CAUSE
on:I-CAUSE
residency:I-CAUSE
and:I-CAUSE
where:I-CAUSE
owners:I-CAUSE
pay:I-CAUSE
income:I-CAUSE
tax.:I-CAUSE
Those:I-... | For 2019 and onwards , the speculation and vacancy tax rate will vary , depending on residency and where owners pay income tax. Those rates will be two per cent for foreign owners and satellite families and 0.5 per cent for British Columbians and other Canadian citizens or permanent residents who are not members of a s... | [
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"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-EFFECT",
"I-... | [
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cd21 | 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
information:I-CAUSE
services:I-CAUSE
provider:I-CAUSE
reported:I-CAUSE
$:I-CAUSE
0.11:I-CAUSE
earnings:I-CAUSE
per:I-CAUSE
share:I-CAUSE
(:I-CAUSE
EPS:I-CAUSE
):I-CAUSE
for:I-CAUSE
the:I-CAUSE
quarter:I-CAUSE
,:O
topping:B-EFFECT
the:I-EFFECT
Zacks:I-EFFECT
':I-EFFECT
consensus:I-EFFECT
estimate:I-EFFECT
of... | The information services provider reported $ 0.11 earnings per share ( EPS ) for the quarter , topping the Zacks ' consensus estimate of $ 0.06 by $ 0.05. | [
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] |
cd22 | 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... | To:B-CAUSE
limit:I-CAUSE
the:I-CAUSE
effect:I-CAUSE
of:I-CAUSE
a:I-CAUSE
protracted:I-CAUSE
bear:I-CAUSE
market:I-CAUSE
in:I-CAUSE
any:I-CAUSE
one:I-CAUSE
industry:I-CAUSE
,:O
I:B-EFFECT
aim:I-EFFECT
to:I-EFFECT
keep:I-EFFECT
the:I-EFFECT
dividend:I-EFFECT
income:I-EFFECT
and:I-EFFECT
portfolio:I-EFFECT
value:I-EFFECT
... | To limit the effect of a protracted bear market in any one industry , I aim to keep the dividend income and portfolio value for each industry under 20 % . | [
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] |
cd23 | 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... | According:B-CAUSE
to:I-CAUSE
the:I-CAUSE
popular:I-CAUSE
way:I-CAUSE
of:I-CAUSE
thinking:I-CAUSE
,:I-CAUSE
if:I-CAUSE
the:I-CAUSE
Fed:I-CAUSE
injects:I-CAUSE
$:I-CAUSE
1:I-CAUSE
billion:I-CAUSE
into:I-CAUSE
the:I-CAUSE
economy:I-CAUSE
and:I-CAUSE
banks:I-CAUSE
have:I-CAUSE
to:I-CAUSE
hold:I-CAUSE
only:I-CAUSE
10:I-CAUS... | According to the popular way of thinking , if the Fed injects $ 1 billion into the economy and banks have to hold only 10 % in reserves against their deposits , this will cause the first bank to lend 90 % of this $ 1 billion. | [
"B-CAUSE",
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cd24 | 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
believes:I-CAUSE
that:I-CAUSE
this:I-CAUSE
business:I-CAUSE
combination:I-CAUSE
makes:I-CAUSE
sense:I-CAUSE
from:I-CAUSE
the:I-CAUSE
complementary:I-CAUSE
assets:I-CAUSE
between:I-CAUSE
the:I-CAUSE
two:I-CAUSE
companies:I-CAUSE
,:O
projecting:B-EFFECT
higher:I-EFFECT
revenue:I-EFFECT
growth:I-EFFECT
than... | Fiserv believes that this business combination makes sense from the complementary assets between the two companies , projecting higher revenue growth than it would achieve on its own and costs savings of about $ 900 million over five years. | [
"B-CAUSE",
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"I-EFFECT",
"I-EFFECT",
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cd25 | 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
original:I-EFFECT
fryer:I-EFFECT
cleaning:I-EFFECT
business:I-EFFECT
works:I-EFFECT
with:I-EFFECT
more:I-EFFECT
than:I-EFFECT
6,000:I-EFFECT
customers:I-EFFECT
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a:I-EFFECT... | The original fryer cleaning business works with more than 6,000 customers a week , draining and filtering their oil , in a process that is not just safer than traditional methods , but also environmentally friendly , because most of the fat can be reused. | [
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cd26 | 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... | Mattress:B-CAUSE
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rival:I-CAUSE
Simba:I-CAUSE
will:I-CAUSE
not:... | Mattress seller Eve Sleep returned to the junior AIM stock exchange on Friday , after saying a planned merger with rival Simba will not go ahead and revenues will be below expectations. The shares crashed 32 % to 3.31p. | [
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cd27 | 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... | Park:B-CAUSE
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September:I-EFFECT... | Park Hotels & Resorts Inc ( NYSE : PK ) Plans Quarterly Dividend of $ 0.45 . Stockholders of record on Monday , September 30th will be given a dividend of 0.45 per share by the financial services provider on Tuesday , October 15th. This represents a $ 1.80 annualized dividend and a dividend yield of 7.19 % . | [
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cd28 | 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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two:I-CAUSE
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bankers:I-CAUSE... | The name tags and bench of attorneys from various international banks are pictured at a regional court in Bonn where two British bankers are accused of involvement in bogus Cum-Ex tax reclaims of 440 million euros from the German state , in Bonn , Germany September 24 , 2019 . REUTERS/Wolfgang Rattay Nicholas Diable , ... | [
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cd29 | 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... | Read:B-CAUSE
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Sept... | Read more … Raytheon ( NYSE : RTN ) VP Wesley D. Kremer sold 2,915 shares of the stock in a transaction on Friday , September 13th. The stock was sold at an average price of $ 200.00 , for a total value of $ 583,000.00 . Following the completion of the transaction , the vice president now owns 26,260 shares of the comp... | [
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cd30 | 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... | General:B-EFFECT
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... | General Motors Co. , down 40 cents to $ 37.78 A strike by United Auto Workers that has brought 33 factories to a halt continued into its third day. | [
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cd31 | 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... | With:B-CAUSE
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,:I-C... | With the company likely to be one of the prime beneficiaries of our positive sector hypothesis ( of stable demand over medium term , rising industry clinker utilisation and benign fuel cost ) , we maintain Buy rating on the stock with a TP of Rs 1,846 ( at 12x CY20e EV/Ebitda ) . | [
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cd32 | 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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.... | ( ACB - Get Rating ) shares were trading at $ 6.54 per share on Wednesday morning , down $ 0.12 ( -1.80 % ) . | [
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cd33 | 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... | Banks:B-EFFECT
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cd34 | 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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.:I-EFF... | The company reported $ 0.78 EPS for the quarter , missing the Zacks ' consensus estimate of $ 0.88 by ( $ 0.10 ) . | [
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cd35 | 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... | A:O
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cd36 | 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... | Thomas:B-EFFECT
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response:I-CA... | Thomas Cook was brought down by a $ 2.1 billion debt pile , built up by a series of ill-fated deals , that hobbled its response to nimble online rivals. | [
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cd37 | 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
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development.:I-CAUSE | In Leitrim , the 15 per cent increase will go towards tourism development , regeneration of town centres and community development. | [
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cd38 | 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... | Major:B-CAUSE
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... | Major shareholders that own 10 % or more of a company 's shares are required to disclose their sales and purchases with the SEC . Shares of BNED stock traded up $ 0.05 on Wednesday , hitting $ 3.35. 451,356 shares of the company 's stock traded hands , compared to its average volume of 665,159 . | [
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cd39 | 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... | With:B-EFFECT
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their:I-EFF... | With more than 275 members , covering the whole spectrum of the listed real estate industry ( companies , investors and their suppliers ) , EPRA represents over EUR 450 billion of real estate assetsand 94 % of the market capitalisation of the FTSE EPRA Nareit Europe Index. EPRA 's mission is to promote , develop and re... | [
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cd40 | 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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n... | Finally , Renaissance Technologies LLC lifted its stake in shares of Travelzoo by 9.2 % in the second quarter. Renaissance Technologies LLC now owns 535,101 shares of the information services provider 's stock valued at $ 8,262,000 after buying an additional 45,201 shares during the period. | [
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cd41 | 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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25:I... | Because of the number of people affected , the amounts paid to each consumer will likely be small , typically from about $ 25 to a few hundred dollars , a Chronicle review of the data determined. | [
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cd42 | 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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Friday:I... | Shares in Thomas Cook have whipsawed for months as investors have sought to calculate whether the stock retains any residual value. On Friday they closed at 3.45p , more than 95 % lower than at the same point last year. | [
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cd43 | 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... | Incumbent:B-EFFECT
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cd44 | 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... | Recall:B-EFFECT
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f... | Recall that a British Commercial Court had on August 16 , awarded judgment in the sum of $ 9.6bn against Nigeria over a failed contract between P & ID and the Federal Ministry of Petroleum Resources in 2010. | [
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cd45 | 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... | Furthermore:B-EFFECT
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to... | Furthermore , my government has secured a grant of Sixty-Six Million US Dollars ( US $ 66,000,000 ) from the World Bank to provide electricity to all rural and peri-urban villages within one hundred kilometre radius of the Brikama and Soma OMVG substations. | [
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cd46 | 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... | Outlook:B-CAUSE
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continue:... | Outlook : Sector tailwinds intact We expect pan-India player ACC to be a prime beneficiary of the positive industry fundamentals . We continue to value the stock at 12x CY20e EV/Ebitda and maintain 'BUY/SP'. | [
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cd47 | 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... | Victory:B-CAUSE
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now:I... | Victory Capital Management Inc. raised its holdings in Precision BioSciences by 474.9 % in the second quarter. Victory Capital Management Inc. now owns 136,830 shares of the company 's stock valued at $ 1,813,000 after acquiring an additional 113,030 shares in the last quarter. | [
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cd48 | 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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0.24.:I-EFFECT | The company reported C $ 0.24 EPS for the quarter , meeting the Zacks ' consensus estimate of C $ 0.24. | [
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cd49 | 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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cd50 | 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... | Also:B-CAUSE
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price... | Also , insider Donald P. Lehr sold 4,822 shares of Intrexon stock in a transaction dated Monday , July 1st. The stock was sold at an average price of $ 7.76 , for a total value of $ 37,418.72 . Following the completion of the transaction , the insider now owns 62,298 shares in the company , valued at $ 483,432.48. | [
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cd51 | 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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cd52 | 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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15:I-CAUSE
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from:I-... | …The chance to test that theory came in May 2003 , when Congress lowered the top rate on long-term capital gains to 15 % from 20 % . According to the Congressional Budget Office , by 2005-06 realizations of capital gains had more than doubled - up 151 % - from the levels for 2002-03 . Capital-gains tax receipts in 2005... | [
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cd53 | 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... | According:B-CAUSE
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one:... | According to the report , Dar Petroleum currently produces around 185,000 barrels per day from two oil blocks in Upper Nile State - one in Paloch and another in nearby Adar - or around 80 per cent of the total oil produced daily in South Sudan. | [
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cd54 | 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... | They:O
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a:I-CAUSE... | They issued an equal weight rating and a $ 74.00 target price on the stock . Two research analysts have rated the stock with a sell rating , twelve have given a hold rating and two have issued a buy rating to the company. The company has a consensus rating of Hold and an average target price of $ 68.50. | [
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cd55 | 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... | Nike:B-CAUSE
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6:I-EFFECT
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two:I-EFFECT... | Nike 's stock surged in the days after the campaign debuted , increasing the company 's value by more than $ 6 billion two weeks later. | [
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cd56 | 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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cd57 | 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... | He:B-EFFECT
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cd58 | 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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0.30:... | The biotechnology company reported ( $ 0.25 ) earnings per share for the quarter , topping analysts ' consensus estimates of ( $ 0.30 ) by $ 0.05. | [
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cd59 | 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... | He:B-CAUSE
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cd60 | 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:O
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sell... | Finally , Deutsche Bank set a $ 33.00 price objective on Park Hotels & Resorts and gave the stock a hold rating in a report on Wednesday , July 31st . One analyst has rated the stock with a sell rating , six have given a hold rating and four have assigned a buy rating to the stock. The company presently has an average ... | [
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cd61 | 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... | Few:B-CAUSE
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so:I-E... | Few were prepared for a single attack on a Saudi Arabian installation to take out 5 % of the world 's oil supplies , so the effect on the oil price was dramatic. | [
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cd62 | 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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by:I-CAU... | For example , McKinsey 's automotive practice estimates that electric vehicles will make up some 17 percent of total car sales globally by 2030 , up from 1 percent in 2017. This could reduce trade in vehicle parts by up to 10 percent ( since EVs have many fewer moving parts than traditional models ) while also dampenin... | [
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cd63 | 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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5.7:B-EF... | The attack on Saudi Arabia 's Abqaiq plant , which accounts for 5 percent of global oil supplies , and a nearby facility took 5.7 million barrels a day of production off line for at least a few days. | [
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cd64 | 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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potenti... | The Department for Transport and Civil Aviation Authority were on standby with a repatriation contingency plan called Operation Matterhorn , with a potential cost of about £600million. | [
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cd65 | 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... | Photograph:B-EFFECT
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cd66 | 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... | Vanguard:B-CAUSE
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cd67 | 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... | Driven:B-CAUSE
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cd68 | 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... | Stocks:B-CAUSE
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rates.:I-C... | Stocks climbed on Tuesday as oil prices fell and the Federal Reserve began its two-day meeting to determine the direction of interest rates. US monetary policy has been key a focus over the last several weeks as other central banks around the world have lowered interest rates to stave-off slowing growth . The Fed is ex... | [
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cd69 | 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... | Select:B-CAUSE
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co... | Select your country Continue Create a free ResearchPool account to access full reports , get a personalised dashboard and follow providers or companies First nameLast nameGet financial insights straight to your inbox Do you want to use these details for invoicing Sign-up Now Email Password Sign-in CIS Market Daily - Ap... | [
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cd70 | 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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"I-EFFECT",
"I-EFFECT",
"I-EFFECT",
"I-EFFECT",
"I-EFFECT",
"I-EFFECT",
"I-EFFECT"
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cd73 | 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... | WATER:O
RESOURCES:O
AND:O
FISHERIES:O
Madam:O
Speaker:O
,:O
Government:O
remains:O
committed:O
to:O
ensuring:O
access:O
to:O
safe:O
drinking:O
water:O
,:O
as:O
well:O
as:O
providing:O
timely:O
and:O
accurate:O
information:O
on:O
weather:O
and:O
climatic:O
conditions:O
for:O
the:O
nation:O
.:O
As:B-CAUSE
a:I-CAUSE
resul... | WATER RESOURCES AND FISHERIES Madam Speaker , Government remains committed to ensuring access to safe drinking water , as well as providing timely and accurate information on weather and climatic conditions for the nation . As a result , we have received funds from the African Development Bank to finance the Climate Sm... | [
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"O",
"B-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAUSE",
"I-CAU... | [
"WATER",
"RESOURCES",
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"Madam",
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