2023年度 人工知能学会全国大会(第37回)

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国際セッション » IS-5 Human interface, education aid

[2U5-IS-5] Human interface, education aid

2023年6月7日(水) 15:30 〜 17:10 U会場 (遠隔)

Chair: Tomohiro Yoshikawa (Suzuka university of medical science)

16:30 〜 16:50

[2U5-IS-5-04] Topic-switch adapted Japanese Dialogue System based on PLATO-2

〇Donghuo Zeng1, Jianming Wu1, Yanan Wang1, Kazunori Matsumoto1, Gen Hattori1, Kazushi Ikeda1 (1. KDDI Research, Inc.)

[[Online, Regular]]

キーワード:Japanese Dialogue System, Topic Switch, Dialogue-Graph

Large-scale open-domain dialogue systems such as PLATO-2 have achieved state-of-the-art scores in both English and Chinese. However, little work explores whether such dialogue systems also work well in the Japanese language. In this work, we create a large-scale Japanese dialogue dataset, Dialogue-Graph, which contains 1.656 million dialogue data in a tree structure from News, TV subtitles, and Wikipedia corpus. Then, we train PLATO-2 using Dialogue-Graph to build a large-scale Japanese dialogue system, PLATO-JDS. In addition, to improve the PLATO-JDS in the topic switch issue, we introduce a topic-switch algorithm composed of a topic discriminator to switch to a new topic when user input differs from the previous topic. We evaluate the user experience by using our model with respect to four metrics, namely, coherence, informativeness, engagingness, and humanness. As a result, our proposed PLATO-JDS achieves an average score of 1.500 for the human evaluation with human-bot chat strategy, which is close to the maximum score of 2.000 and suggests the high-quality dialogue generation capability of PLATO-2 in Japanese. Furthermore, our proposed topic-switch algorithm achieves an average score of 1.767 and outperforms PLATO-JDS by 0.267, indicating its effectiveness in improving the user experience of our system.

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