面向会话搜索的信息寻求对话混合主动性的大规模分析

Svitlana Vakulenko, E. Kanoulas, M. de Rijke
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引用次数: 21

摘要

会话搜索是一个相对年轻的研究领域,旨在实现信息搜索对话的自动化。在本文中,我们通过分析信息寻求对话的结构属性,帮助将其定位于会话人工智能(AI)中的其他研究领域。为此,我们对来自16个公开可用的对话数据集的超过150K个文本进行了大规模的对话分析。收集这些数据集是为了通知不同的基于对话的任务,包括对话搜索。我们从这些对话文本中提取不同的混合主动性模式,并用它们来比较不同类型的对话。此外,我们将用于研究目的的信息寻求对话中的模式与由专业图书馆员进行的虚拟参考访谈中的模式进行了对比。我们提供的见解(1)在会话搜索和其他会话AI任务之间建立密切关系;(2)揭示现有会话数据集的局限性,为未来的数据收集任务提供信息。
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A Large-scale Analysis of Mixed Initiative in Information-Seeking Dialogues for Conversational Search
Conversational search is a relatively young area of research that aims at automating an information-seeking dialogue. In this article, we help to position it with respect to other research areas within conversational artificial intelligence (AI) by analysing the structural properties of an information-seeking dialogue. To this end, we perform a large-scale dialogue analysis of more than 150K transcripts from 16 publicly available dialogue datasets. These datasets were collected to inform different dialogue-based tasks including conversational search. We extract different patterns of mixed initiative from these dialogue transcripts and use them to compare dialogues of different types. Moreover, we contrast the patterns found in information-seeking dialogues that are being used for research purposes with the patterns found in virtual reference interviews that were conducted by professional librarians. The insights we provide (1) establish close relations between conversational search and other conversational AI tasks and (2) uncover limitations of existing conversational datasets to inform future data collection tasks.
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