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A Latent Discriminative Model for Compositional Entailment Relation Recognition Using Natural Logic

机译:基于自然逻辑的构图蕴涵关系识别的潜在判别模型

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Recognizing semantic relations between sentences, such as entailment and contradiction, is a challenging task that requires detailed analysis of the interaction between diverse linguistic phenomena. In this paper, we propose a latent discriminative model that unifies a statistical framework and a theory of Natural Logic to capture complex interactions between linguistic phenomena. The proposed approach jointly models alignments, their local semantic relations, and a sentence-level semantic relation, and has hidden variables including alignment edits between sentences and their semantic relations, only requires sentences pairs annotated with sentence-level semantic relations as training data to learn appropriate alignments. In evaluation on a dataset including diverse linguistic phenomena, our proposed method achieved a competitive results on alignment prediction, and significant improvements on a sentence-level semantic relation recognition task compared to an alignment supervised model. Our analysis did not provide evidence that directly learning alignments and their labels using gold standard alignments contributed to semantic relation recognition performance and instead suggests that they can be detrimental to performance if used in a manner that prevents the learning of globally optimal alignments.
机译:识别句子之间的语义关系(如包围和矛盾)是一项艰巨的任务,需要对各种语言现象之间的相互作用进行详细分析。在本文中,我们提出了一个潜在的判别模型,该模型将统计框架和自然逻辑理论统一起来,以捕获语言现象之间的复杂相互作用。所提出的方法联合建模对齐方式,它们的局部语义关系和句子级语义关系,并具有隐藏变量,包括句子及其语义关系之间的对齐方式编辑,只需要带有句子级语义关系的注释对作为训练数据即可学习。适当的对齐方式。在对包含多种语言现象的数据集进行评估时,与对齐监督模型相比,我们提出的方法在对齐预测方面取得了竞争性结果,并且在句子级语义关系识别任务上取得了显着改进。我们的分析没有提供证据表明使用黄金标准比对直接学习比对及其标签有助于语义关系识别性能,而是表明如果以防止学习全局最优比对的方式使用它们,可能会对性能产生不利影响。

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