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Enabling Transitivity for Lexical Inference on Chinese Verbs Using Probabilistic Soft Logic

机译:使用概率软逻辑为汉语动词的词法推理启用及物性

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To learn more knowledge, enabling transitivity is a vital step for lexical inference. However, most of the lexical inference models with good performance are for nouns or noun phrases, which cannot be directly applied to the inference on events or states. In this paper, we construct the largest Chinese verb lexical inference dataset containing 18,029 verb pairs, where for each pair one of four inference relations are annotated. We further build a probabilistic soft logic (PSL) model to infer verb lexicons using the logic language. With PSL, we easily enable transitivity in two layers, the observed layer and the feature layer, which are included in the knowledge base. We further discuss the effect of transitives within and between these layers. Results show the performance of the proposed PSL model can be improved at least 3.5% (relative) when the transitivity is enabled. Furthermore, experiments show that enabling transitivity in the observed layer benefits the most.
机译:要学习更多知识,启用和物性是词汇推理的重要步骤。但是,大多数具有良好性能的词汇推理模型都是针对名词或名词短语的,无法直接应用于事件或状态的推理。在本文中,我们构建了最大的汉语动词词汇推理数据集,包含18,029个动词对,其中每对被标注了四个推理关系之一。我们进一步建立了概率软逻辑(PSL)模型,以使用逻辑语言来推断动词词典。使用PSL,我们可以轻松地在知识库中包括的两层(观察层和特征层)中启用可传递性。我们将进一步讨论这些层之内和之间的及物传递的影响。结果表明,启用传递性后,所提出的PSL模型的性能至少可以提高3.5%(相对)。此外,实验表明,在观察层中启用可传递性最有利。

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