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Investigating person-specific errors in chat-oriented dialogue systems

2022-05-01ACL 2022Unverified0· sign in to hype

Koh Mitsuda, Ryuichiro Higashinaka, Tingxuan Li, Sen Yoshida

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Abstract

Creating chatbots to behave like real people is important in terms of believability. Errors in general chatbots and chatbots that follow a rough persona have been studied, but those in chatbots that behave like real people have not been thoroughly investigated. We collected a large amount of user interactions of a generation-based chatbot trained from large-scale dialogue data of a specific character, i.e., target person, and analyzed errors related to that person. We found that person-specific errors can be divided into two types: errors in attributes and those in relations, each of which can be divided into two levels: self and other. The correspondence with an existing taxonomy of errors was also investigated, and person-specific errors that should be addressed in the future were clarified.

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