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Zero-shot Clarifying Question Generation for Conversational Search

Zhenduo Wang, Yuancheng Tu, Corby Rosset, Nick Craswell, Ming Wu, Qingyao Ai

202319 citationsDOIOpen Access PDF

Abstract

A long-standing challenge for search and conversational assistants is query intention detection in ambiguous queries. Asking clarifying questions in conversational search has been widely studied and considered an effective solution to resolve query ambiguity. Existing work have explored various approaches for clarifying question ranking and generation. However, due to the lack of real conversational search data, they have to use artificial datasets for training, which limits their generalizability to real-world search scenarios. As a result, the industry has shown reluctance to implement them in reality, further suspending the availability of real conversational search interaction data. The above dilemma can be formulated as a cold start problem of clarifying question generation and conversational search in general. Furthermore, even if we do have large-scale conversational logs, it is not realistic to gather training data that can comprehensively cover all possible queries and topics in open-domain search scenarios. The risk of fitting bias when training a clarifying question retrieval/generation model on incomprehensive dataset is thus another important challenge.

Topics & Concepts

Computer scienceAmbiguityRanking (information retrieval)Generalizability theoryInformation retrievalDilemmaDomain (mathematical analysis)Artificial intelligenceMathematical analysisMathematicsProgramming languageStatisticsEpistemologyPhilosophyTopic ModelingSpeech and dialogue systemsExpert finding and Q&A systems
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