Designing Effective Interview Chatbots: Automatic Chatbot Profiling and Design Suggestion Generation for Chatbot Debugging

要旨

Recent studies show the effectiveness of interview chatbots in information elicitation. However, designing an effective interview chatbot is non-trivial. Few tools exist to help designers design, evaluate, and improve an interview chatbot iteratively. Based on a formative study and literature reviews, we propose a computational framework for quantifying the performance of interview chatbots. Incorporating the framework, we have developed iChatProfile, an assistive design tool that can automatically generate a profile of an interview chatbot with quantified performance metrics and offer design suggestions for improving the chatbot based on such metrics. To validate the effectiveness of iChatProfile, we designed and conducted a between-subject study that compared the performance of 10 interview chatbots designed with or without using iChatProfile. Based on the live chats between the 10 chatbots and 1349 users, our results show that iChatProfile helped the designers build significantly more effective interview chatbots, improving both interview quality and user experience.

著者
Xu Han
University of Colorado Boulder, Boulder, Colorado, United States
Michelle Zhou
Juji, Inc., San Jose, California, United States
Matthew J. Turner
University of Colorado at Boulder, Boulder, Colorado, United States
Tom Yeh
University of Colorado Boulder, Boulder, Colorado, United States
DOI

10.1145/3411764.3445569

論文URL

https://doi.org/10.1145/3411764.3445569

動画

会議: CHI 2021

The ACM CHI Conference on Human Factors in Computing Systems (https://chi2021.acm.org/)

セッション: Computational Human-AI Conversation

[A] Paper Room 02, 2021-05-11 17:00:00~2021-05-11 19:00:00 / [B] Paper Room 02, 2021-05-12 01:00:00~2021-05-12 03:00:00 / [C] Paper Room 02, 2021-05-12 09:00:00~2021-05-12 11:00:00
Paper Room 02
14 件の発表
2021-05-11 17:00:00
2021-05-11 19:00:00
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