JSAI2022

Presentation information

Interactive Session

General Session » Interactive Session

[3Yin2] Interactive session 1

Thu. Jun 16, 2022 11:30 AM - 1:10 PM Room Y (Event Hall)

[3Yin2-26] A Comparison of Cross-Lingual Sentiment Analysis Methods Using BERT

〇Hiroyasu Yoshino1, Kanako Komiya2 (1.Department of Electrical Engineering and Computer Science, Faculty of Engineering, Tokyo University of Agriculture and Technology , 2.Institute of Engineering, Tokyo University of Agriculture and Technology)

Keywords:cross-lingual, sentiment analysis, BERT

This paper compares three cross-lingual sentiment analysis methods using various Bidirectional Encoder Representations from Transformers (BERT) models to predict product review ratings for low-resource languages. Sentiment analysis involves the task of predicting review ratings. Cross-lingual approaches have been studied because the prediction accuracy tends to be low due to the lack of training data for low-resource languages. Meanwhile, recently, the approaches that fine-tune pre-trained models attract attention. In particular, BERT achieved high performances for various tasks. Therefore, we compared cross-lingual methods that use various BERT with a large amount of English data and a small amount of Japanese data to improve the prediction accuracy of Japanese review ratings. We compared three methods: method A, which uses English BERT fine-tuned with English reviews and Japanese test data translated into English, method B, which uses Japanese BERT fine-tuned with English reviews translated into Japanese, and method C, which uses English-Japanese parallel data to fine-tune the multi-lingual BERT. The translation was conducted using machine translation. Compared to the baseline model, which uses Japanese BERT fine-tuned with only a small amount of Japanese data, we found that method B improved performance, while methods A and C lost performances.

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