人工知能学会全国大会論文集
Online ISSN : 2758-7347
35th (2021)
セッションID: 2N4-IS-2c-05
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Performance Evaluation of Japanese BERT Model for Intent Classification Using a Chatbot
*Kazunori YAWATATamao SUZUKIKeisuke KIRYUKen MOHRI
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The recent development of natural language processing technology using deep learning has been remarkable. BERT, developed by Google, and GPT, developed by the OpenAI Foundation, have contributed to this development. In this experiment, we compared the performance of the Japanese BERT model, one of the latest natural language processing technologies, with Word2Vec, one of the conventional methods. We used data from the LiveDoor news corpus for the experiments. We also built a FAQ chatbot and compared the rate of correct answers to questions about news articles asked by users between BERT and Word2Vec. In our experiments, BERT showed superior performance compared to Word2Vec. We were also able to obtain specific insights into the factors that contributed to the performance of BERT, and were able to objectively evaluate the performance of the Japanese BERT model.

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© 2021 The Japanese Society for Artificial Intelligence
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