"It doesn't look good for a date": Transforming Critiques into Preferences for Conversational Recommendation Systems

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Abstract

Conversations aimed at determining good recommendations are iterative in nature. People often express their preferences in terms of a critique of the current recommendation (e.g., “It doesn't look good for a date”), requiring some degree of common sense for a preference to be inferred. In this work, we present a method for transforming a user critique into a positive preference (e.g., “I prefer more romantic”) in order to retrieve reviews pertaining to potentially better recommendations (e.g., “Perfect for a romantic dinner”). We leverage a large neural language model (LM) in a few-shot setting to perform critique-to-preference transformation, and we test two methods for retrieving recommendations: one that matches embeddings, and another that fine-tunes an LM for the task. We instantiate this approach in the restaurant domain and evaluate it using a new dataset of restaurant critiques. In an ablation study, we show that utilizing critique-to-preference transformation improves recommendations, and that there are at least three general cases that explain this improved performance.

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APA

Bursztyn, V. S., Healey, J., Lipka, N., Koh, E., Downey, D., & Birnbaum, L. (2021). “It doesn’t look good for a date”: Transforming Critiques into Preferences for Conversational Recommendation Systems. In EMNLP 2021 - 2021 Conference on Empirical Methods in Natural Language Processing, Proceedings (pp. 1913–1918). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.emnlp-main.145

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