An Extensible Probabilistic Transformation-based Approach to the Third Recognizing Textual Entailment Challenge

S. Harmeling
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引用次数: 22

Abstract

We introduce a system for textual entailment that is based on a probabilistic model of entailment. The model is defined using some calculus of transformations on dependency trees, which is characterized by the fact that derivations in that calculus preserve the truth only with a certain probability. We also describe a possible set of transformations (and with it implicitly a calculus) that was successfully applied to the RTE3 challenge data. However, our system can be improved in many ways and we see it as the starting point for a promising new approach to textual entailment.
基于可扩展概率变换的文本蕴涵识别方法
我们介绍了一个基于蕴涵的概率模型的文本蕴涵系统。该模型使用依赖树上的变换演算来定义,其特点是该演算中的推导只在一定概率下保持真值。我们还描述了成功应用于RTE3挑战数据的一组可能的转换(以及隐含的演算)。然而,我们的系统可以在许多方面得到改进,我们认为它是一个有前途的文本蕴涵新方法的起点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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