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Does Chinese BERT Encode Word Structure?

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arxiv 2010.07711 v1 pith:JOGCTGIY submitted 2020-10-15 cs.CL

Does Chinese BERT Encode Word Structure?

classification cs.CL
keywords bertfeatureswordchinesetasksworkcapturedrelying
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Contextualized representations give significantly improved results for a wide range of NLP tasks. Much work has been dedicated to analyzing the features captured by representative models such as BERT. Existing work finds that syntactic, semantic and word sense knowledge are encoded in BERT. However, little work has investigated word features for character-based languages such as Chinese. We investigate Chinese BERT using both attention weight distribution statistics and probing tasks, finding that (1) word information is captured by BERT; (2) word-level features are mostly in the middle representation layers; (3) downstream tasks make different use of word features in BERT, with POS tagging and chunking relying the most on word features, and natural language inference relying the least on such features.

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