Estimating the Usefulness of Clarifying Questions and Answers for Conversational Search

Authors: Ivan Sekulić, Weronika Łajewska, Krisztian Balog, Fabio Crestani

This is the author's version of the work. The definitive version is published in: Proceedings of the 46th European Conference on Information Retrieval (ECIR '24), March 24-28, 2024, Glasgow, Scotland

Abstract: While the body of research directed towards constructing and generating clarifying questions in mixed-initiative conversational search systems is vast, research aimed at processing and comprehending users' answers to such questions is scarce. To this end, we present a simple yet effective method for processing answers to clarifying questions, moving away from previous work that simply appends answers to the original query and thus potentially degrades retrieval performance. Specifically, we propose a classifier for assessing usefulness of the prompted clarifying question and an answer given by the user. Useful questions or answers are further appended to the conversation history and passed to a transformer-based query rewriting module. Results demonstrate significant improvements over strong non-mixed-initiative baselines. Furthermore, the proposed approach mitigates the performance drops when non useful questions and answers are utilized.

Submitted to arXiv on 21 Jan. 2024

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