会话检索中澄清问题对文档排序的影响分析

Antonios Minas Krasakis, Mohammad Aliannejadi, Nikos Voskarides, E. Kanoulas
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引用次数: 37

摘要

最近关于会话搜索的研究强调了混合主动性在会话中的重要性。为了实现混合主动,系统应该能够向用户提出澄清性问题。然而,底层排名模型(支持会话搜索)在对文档进行排名时,对这些澄清性问题和答案的能力总体上还没有进行分析。为此,我们分析了带有澄清问题的词汇排序模型在会话搜索数据集上的性能。我们从定量和定性两方面调查了澄清问题和用户回答的不同方面如何影响排名的质量。我们认为,在这种混合主动设置中存在的明确反馈的基础上,需要对整个对话轮的澄清进行一些细致的处理。根据我们的发现,我们引入了一个简单的基于启发式的词汇基线,它明显优于现有的朴素基线。我们的工作旨在增强我们对这一特定任务中存在的挑战的理解,并为设计更合适的会话排名模型提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysing the Effect of Clarifying Questions on Document Ranking in Conversational Search
Recent research on conversational search highlights the importance of mixed-initiative in conversations. To enable mixed-initiative, the system should be able to ask clarifying questions to the user. However, the ability of the underlying ranking models (which support conversational search) to account for these clarifying questions and answers has not been analysed when ranking documents, at large. To this end, we analyse the performance of a lexical ranking model on a conversational search dataset with clarifying questions. We investigate, both quantitatively and qualitatively, how different aspects of clarifying questions and user answers affect the quality of ranking. We argue that there needs to be some fine-grained treatment of the entire conversational round of clarification, based on the explicit feedback which is present in such mixed-initiative settings. Informed by our findings, we introduce a simple heuristic-based lexical baseline, that significantly outperforms the existing naive baselines. Our work aims to enhance our understanding of the challenges present in this particular task and inform the design of more appropriate conversational ranking models.
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