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Exploiting Syntactic Structure for Better Language Modeling: A Syntactic Distance Approach

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arxiv 2005.05864 v1 pith:KIHNSLC7 submitted 2020-05-12 cs.CL

Exploiting Syntactic Structure for Better Language Modeling: A Syntactic Distance Approach

classification cs.CL
keywords syntacticlanguagestructuretreesbettergroundmodelingmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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It is commonly believed that knowledge of syntactic structure should improve language modeling. However, effectively and computationally efficiently incorporating syntactic structure into neural language models has been a challenging topic. In this paper, we make use of a multi-task objective, i.e., the models simultaneously predict words as well as ground truth parse trees in a form called "syntactic distances", where information between these two separate objectives shares the same intermediate representation. Experimental results on the Penn Treebank and Chinese Treebank datasets show that when ground truth parse trees are provided as additional training signals, the model is able to achieve lower perplexity and induce trees with better quality.

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