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Empirical Analysis of Training Strategies of Transformer-based Japanese Chit-chat Systems

Large-scale Transformer-based models and datasets are evaluated to assess their effectiveness in building Japanese chit-chat dialogue systems, examining the impact of fine-tuning datasets, model parameters, and additional information.

Year
2021
Venue
arXiv 2021
Authors
7
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arxiv.org/abs/2109.05217ARXIV-DEFAULT
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Abstract

In recent years, several high-performance conversational systems have been proposed based on the Transformer encoder-decoder model. Although previous studies analyzed the effects of the model parameters and the decoding method on subjective dialogue evaluations with overall metrics, they did not analyze how the differences of fine-tuning datasets affect on user's detailed impression. In addition, the Transformer-based approach has only been verified for English, not for such languages with large inter-language distances as Japanese. In this study, we develop large-scale Transformer-based Japanese dialogue models and Japanese chit-chat datasets to examine the effectiveness of the Transformer-based approach for building chit-chat dialogue systems. We evaluated and analyzed the impressions of human dialogues in different fine-tuning datasets, model parameters, and the use of additional information.

Authors

7