A semantics-aware approach for multilingual natural language inference

被引:0
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作者
Phuong Le-Hong
Erik Cambria
机构
[1] Vietnam National University,School of Computer Science and Engineering
[2] NTU,undefined
来源
关键词
Language inference; Semantics; Recurrent neural networks; Transformers; Commonsense; Text;
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摘要
This paper introduces a semantics-aware approach to natural language inference which allows neural network models to perform better on natural language inference benchmarks. We propose to incorporate explicit lexical and concept-level semantics from knowledge bases to improve inference accuracy. We conduct an extensive evaluation of four models using different sentence encoders, including continuous bag-of-words, convolutional neural network, recurrent neural network, and the transformer model. Experimental results demonstrate that semantics-aware neural models give better accuracy than those without semantics information. On average of the three strong models, our semantic-aware approach improves natural language inference in different languages.
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页码:611 / 639
页数:28
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