Unsupervised Question Clarity Prediction Through Retrieved Item Coherency
Negar Arabzadeh, Mahsa Seifikar, Charles L. A. Clarke

TL;DR
This paper introduces an unsupervised method for predicting when a conversational question needs clarification by analyzing the coherence of retrieved results, improving system responsiveness without requiring labeled data.
Contribution
It proposes a novel unsupervised approach based on graph connectivity of retrieved items to detect ambiguity, outperforming supervised methods in generalization.
Findings
Unsupervised method matches supervised performance.
Graph connectivity effectively indicates query ambiguity.
Approach generalizes well across datasets.
Abstract
Despite recent progress on conversational systems, they still do not perform smoothly and coherently when faced with ambiguous requests. When questions are unclear, conversational systems should have the ability to ask clarifying questions, rather than assuming a particular interpretation or simply responding that they do not understand. Previous studies have shown that users are more satisfied when asked a clarifying question, rather than receiving an unrelated response. While the research community has paid substantial attention to the problem of predicting query ambiguity in traditional search contexts, researchers have paid relatively little attention to predicting when this ambiguity is sufficient to warrant clarification in the context of conversational systems. In this paper, we propose an unsupervised method for predicting the need for clarification. This method is based on the…
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Taxonomy
TopicsTopic Modeling · Expert finding and Q&A systems · Speech and dialogue systems
