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Excitatory or Inhibitory: A New Semantic Orientation Extracts Contradiction and Causality from the Web

机译:兴奋或抑制:一种新的语义取向从网络中提取矛盾和因果关系

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We propose a new semantic orientation, Excitation, and its automatic acquisition method. Excitation is a semantic property of predicates that classifies them into excitatory, inhibitory and neutral. We show that Excitation is useful for extracting contradiction pairs (e.g., destroy cancer ⊥ develop cancer) and causality pairs (e.g., increase in crime ⇒ heighten anxiety). Our experiments show that with automatically acquired Excitation knowledge we can extract one million contradiction pairs and 500,000 causality pairs with about 70% precision from a 600 million page Web corpus. Furthermore, by combining these extracted causality and contradiction pairs, we can generate one million plausible causality hypotheses that are not written in any single sentence in our corpus with reasonable precision.
机译:我们提出了一种新的语义取向,激励及其自动获取方法。激发是谓词的语义特性,将谓词分为兴奋性,抑制性和中性。我们表明,激发对于提取矛盾对(例如,消灭癌症⊥罹患癌症)和因果关系对(例如,犯罪增加⇒加剧焦虑)很有用。我们的实验表明,利用自动获取的激励知识,我们可以从6亿页的Web语料库中以大约70%的精度提取100万个矛盾对和500,000个因果对。此外,通过组合这些提取的因果关系和矛盾对,我们可以以合理的精度生成一百万个合理的因果关系假设,这些假设未写在我们的语料库中的任何单个句子中。

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