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When BERT meets Bilbo: a learning curve analysis of pretrained language model on disease classification
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In: BMC Med Inform Decis Mak (2022)
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Explainable Prediction of Text Complexity: The Missing Preliminaries for Text Simplification ...
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Explainable Prediction of Text Complexity: The Missing Preliminaries for Text Simplification ...
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Judge the Judges: A Large-Scale Evaluation Study of Neural Language Models for Online Review Generation ...
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Complexities, variations, and errors of numbering within clinical notes: the potential impact on information extraction and cohort-identification
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Complexities, variations, and errors of numbering within clinical notes: the potential impact on information extraction and cohort-identification
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“I Loan Because...": Understanding Motivations for Pro-Social Lending ...
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Untangling Emoji Popularity Through Semantic Embeddings
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In: Proceedings of the International AAAI Conference on Web and Social Media; Vol. 11 No. 1 (2017): Eleventh International AAAI Conference on Web and Social Media ; 2334-0770 ; 2162-3449 (2017)
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NLP Driven Models for Automatically Generating Survey Articles for Scientific Topics.
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Using Natural Language Processing to Mine Multiple Perspectives from Social Media and Scientific Literature.
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DESPIC: Detecting Early Signatures of Persuasion in Information Cascades
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In: DTIC (2012)
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Clustering and comparing information extracted from personal health messages
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Voice-Dictated versus Typed-in Clinician Notes: Linguistic Properties and the Potential Implications on Natural Language Processing
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