source string | text string | filtering_features string | source_other string | tags list | matched_keywords dict | match_summary dict |
|---|---|---|---|---|---|---|
arxiv |
Calibrating AI Models for Wireless Communications via Conformal Prediction
15 Dec 2022
Student Member, IEEEKfir M Cohen kfir.cohen@kcl.ac.uk
Viterbi Faculty of Electrical and Computing Engineering
Technion-Israel Institute of Technology
WC2R 2LS, 3200003London, HaifaU.K., Israel
Member, IEEESangwoo Park sangwoo.par... | {'fraction_non_alphanumeric': 0.06803734711160184, 'fraction_numerical': 0.026959812192481267, 'mean_word_length': 4.422144725370532, 'pattern_counts': {'":': 0, '<': 0, '<?xml version=': 0, '>': 2, 'https://': 3, 'lorem ipsum': 0, 'www.': 0, 'xml': 0}, 'pii_count': 3, 'substrings_counts': 0, 'word_list_counts': {'curs... | {'abstract': "When used in complex engineered systems, such as communication networks, artificial intelligence (AI) models should be not only as accurate as possible, but also well calibrated. A well-calibrated AI model is one that can reliably quantify the uncertainty of its decisions, assigning high confidence levels... | [
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arxiv | "\nTHE FLEXIBLE GUMBEL DISTRIBUTION: A NEW MODEL FOR INFERENCE ABOUT THE MODE A PREPRINT\nDecember 6(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.051861978265383815, 'fraction_numerical': 0.04608223160517755, 'mea(...TRUNCATED) | "{'abstract': 'A new unimodal distribution family indexed by the mode and three other parameters is (...TRUNCATED) | [
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arxiv | "\nA Data-Driven Travel Mode Share Estimation Framework based on Mobile Device Location Data\n\n\nMo(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.059444296019235905, 'fraction_numerical': 0.05326609671386588, 'mea(...TRUNCATED) | "{'abstract': 'Mobile device location data (MDLD) contains abundant travel behavior information to s(...TRUNCATED) | [
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arxiv | "\nApproximate Killing Fields as an Eigenvalue Problem\n12 Aug 2008 (Dated: July 13, 2007)\n\nChrist(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.050758332971187696, 'fraction_numerical': 0.019382034679066535, 'me(...TRUNCATED) | "{'abstract': 'Approximate Killing vector fields are expected to help define physically meaningful s(...TRUNCATED) | [
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arxiv | "\nMulti-Agent Reinforcement Learning for Cooperative Air Transportation Services in City-Wide Auton(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.053080821552413976, 'fraction_numerical': 0.022418099371953732, 'me(...TRUNCATED) | "{'abstract': 'The development of urban-air-mobility (UAM) is rapidly progressing with spurs, and th(...TRUNCATED) | [
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arxiv | "\nQUANTIFYING AND MANAGING UNCERTAINTY IN PIECEWISE-DETERMINISTIC MARKOV PROCESSES *\n\n\nElliot Ca(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.06815232186382197, 'fraction_numerical': 0.023730387346607155, 'mea(...TRUNCATED) | "{'abstract': 'In piecewise-deterministic Markov processes (PDMPs) the state of a finite-dimensional(...TRUNCATED) | [
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arxiv | "\nCorrelated Stochastic Knapsack with a Submodular Objective Subrata Mitra\n3 Aug 2022\n\nSheng Yan(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.06921824104234528, 'fraction_numerical': 0.030299945711183496, 'mea(...TRUNCATED) | "{'abstract': 'We study the correlated stochastic knapsack problem of a submodular target function, (...TRUNCATED) | [
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arxiv | "\nStrain Induced Enhanced Photocatalytic Activities in Layered Two Dimensional C 2 N/MoS 2 Heterost(...TRUNCATED) | "{'fraction_non_alphanumeric': 0.03756251358991085, 'fraction_numerical': 0.02584801043705153, 'mean(...TRUNCATED) | "{'abstract': 'The improved photocatalytic water splitting using 2D materials has technological impo(...TRUNCATED) | [
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