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MusicBot: Evaluating critiquing-based music recommenders with conversational interaction

Publication ,  Conference
Jin, Y; Cai, W; Chen, L; Htun, NN; Verbert, K
Published in: International Conference on Information and Knowledge Management Proceedings
November 3, 2019

Critiquing-based recommender systems aim to elicit more accurate user preferences from users' feedback toward recommendations. However, systems using a graphical user interface (GUI) limit the way that users can critique the recommendation. With the rise of chatbots in many application domains, they have been regarded as an ideal platform to build critiquing-based recommender systems. Therefore, we present MusicBot, a chatbot for music recommendations, featured with two typical critiquing techniques, user-initiated critiquing (UC) and system-suggested critiquing (SC). By conducting a within-subjects (N=45) study with two typical scenarios of music listening, we compared a system of only having UC with a hybrid critiquing system that combines SC with UC. Furthermore, we analyzed the effects of four personal characteristics, musical sophistication (MS), desire for control (DFC), chatbot experience (CE), and tech savviness (TS), on the user's perception and interaction of the recommendation in MusicBot. In general, compared with UC, SC yields higher perceived diversity and efficiency in looking for songs; combining UC and SC tends to increase user engagement. Both MS and DFC positively influence several key user experience (UX) metrics of MusicBot such as interest matching, perceived controllability, and intent to provide feedback.

Duke Scholars

Published In

International Conference on Information and Knowledge Management Proceedings

DOI

Publication Date

November 3, 2019

Start / End Page

951 / 960
 

Citation

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Jin, Y., Cai, W., Chen, L., Htun, N. N., & Verbert, K. (2019). MusicBot: Evaluating critiquing-based music recommenders with conversational interaction. In International Conference on Information and Knowledge Management Proceedings (pp. 951–960). https://doi.org/10.1145/3357384.3357923
Jin, Y., W. Cai, L. Chen, N. N. Htun, and K. Verbert. “MusicBot: Evaluating critiquing-based music recommenders with conversational interaction.” In International Conference on Information and Knowledge Management Proceedings, 951–60, 2019. https://doi.org/10.1145/3357384.3357923.
Jin Y, Cai W, Chen L, Htun NN, Verbert K. MusicBot: Evaluating critiquing-based music recommenders with conversational interaction. In: International Conference on Information and Knowledge Management Proceedings. 2019. p. 951–60.
Jin, Y., et al. “MusicBot: Evaluating critiquing-based music recommenders with conversational interaction.” International Conference on Information and Knowledge Management Proceedings, 2019, pp. 951–60. Scopus, doi:10.1145/3357384.3357923.
Jin Y, Cai W, Chen L, Htun NN, Verbert K. MusicBot: Evaluating critiquing-based music recommenders with conversational interaction. International Conference on Information and Knowledge Management Proceedings. 2019. p. 951–960.

Published In

International Conference on Information and Knowledge Management Proceedings

DOI

Publication Date

November 3, 2019

Start / End Page

951 / 960