Spoken Conversational Context Improves Query Auto-completion in Web Search

T. Vuong, S. Andolina, Giulio Jacucci, Tuukka Ruotsalo
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引用次数: 15

Abstract

Web searches often originate from conversations in which people engage before they perform a search. Therefore, conversations can be a valuable source of context with which to support the search process. We investigate whether spoken input from conversations can be used as a context to improve query auto-completion. We model the temporal dynamics of the spoken conversational context preceding queries and use these models to re-rank the query auto-completion suggestions. Data were collected from a controlled experiment and comprised conversations among 12 participant pairs conversing about movies or traveling. Search query logs during the conversations were recorded and temporally associated with the conversations. We compared the effects of spoken conversational input in four conditions: a control condition without contextualization; an experimental condition with the model using search query logs; an experimental condition with the model using spoken conversational input; and an experimental condition with the model using both search query logs and spoken conversational input. We show the advantage of combining the spoken conversational context with the Web-search context for improved retrieval performance. Our results suggest that spoken conversations provide a rich context for supporting information searches beyond current user-modeling approaches.
口语会话上下文改善了Web搜索中的查询自动完成
网络搜索通常源于人们在执行搜索之前进行的对话。因此,对话可以成为支持搜索过程的有价值的上下文来源。我们研究了对话中的语音输入是否可以用作上下文来改进查询自动完成。我们对查询之前的口语会话上下文的时间动态建模,并使用这些模型对查询自动完成建议进行重新排序。数据收集自一项对照实验,包括12对参与者关于电影或旅行的对话。记录对话期间的搜索查询日志,并与对话临时关联。我们比较了四种情况下口语会话输入的效果:没有语境化的控制条件;实验条件下,该模型使用搜索查询日志;使用口语会话输入模型的实验条件并给出了该模型同时使用搜索查询日志和语音会话输入的实验条件。我们展示了将口语会话上下文与web搜索上下文相结合以提高检索性能的优势。我们的研究结果表明,口语会话为支持信息搜索提供了丰富的上下文,超出了当前的用户建模方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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