JACIII Vol.24 No.3 pp. 422-435
doi: 10.20965/jaciii.2020.p0422


Study on Development of Humor Discriminator for Dialogue System

Tomohiro Yoshikawa and Ryosuke Iwakura

Graduate School of Engineering, Nagoya University
Furo-cho, Chikusa-ku, Nagoya, Aichi 464-8603, Japan

October 31, 2019
April 6, 2020
May 20, 2020
automatic dialogue system, non task oriented, humor discriminator

Studies on automatic dialogue systems, which allow people and computers to communicate with each other using natural language, have been attracting attention. In particular, the main objective of a non-task-oriented dialogue system is not to achieve a specific task but to amuse users through chat and free dialogue. For this type of dialogue system, continuity of the dialogue is important because users can easily get tired if the dialogue is monotonous. On the other hand, preceding studies have shown that speech with humorous expressions is effective in improving the continuity of a dialogue. In this study, we developed a computer-based humor discriminator to perform user- or situation-independent objective discrimination of humor. Using the humor discriminator, we also developed an automatic humor generation system and conducted an evaluation experiment with human subjects to test the generated jokes. A t-test on the evaluation scores revealed a significant difference (P value: 3.5×10-5) between the proposed and existing methods of joke generation.

Tool screen for joke evaluation

Tool screen for joke evaluation

Cite this article as:
T. Yoshikawa and R. Iwakura, “Study on Development of Humor Discriminator for Dialogue System,” J. Adv. Comput. Intell. Intell. Inform., Vol.24 No.3, pp. 422-435, 2020.
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