APPLIED TEXTUAL ENTAILMENT: A generic framework to capture shallow semantic inference

APPLIED TEXTUAL ENTAILMENT: A generic framework to capture shallow semantic inference(2009)

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摘要
This book introduces the applied notion of textual entailment as a generic empirical task that captures major semantic inferences across many applications. Textual Entailment addresses semantic inference as a direct mapping between language expressions and abstracts the common semantic inferences as needed for text based Natural Language Processing applications. The book defines the task and describes the creation of a benchmark dataset for textual entailment along with proposed evaluation measures. It further describes how textual entailment can be approximated and modeled at the lexical level and proposes a lexical reference subtask and a correspondingly derived dataset. The book further proposes a general probabilistic setting that casts the applied notion of textual entailment in probabilistic terms. This proposed setting may provide a unifying framework for modeling uncertain semantic inferences from texts. Finally, the book presents a novel acquisition algorithm to identify lexical entailment relations from a single corpus focusing on the extraction of verb paraphrases.
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关键词
shallow semantic inference,APPLIED TEXTUAL ENTAILMENT,uncertain semantic inference,semantic inference,lexical entailment relation,applied notion,generic framework,benchmark dataset,lexical level,common semantic inference,textual entailment,major semantic inference,lexical reference subtask
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