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A learning approach to optimizing exploration–exploitation tradeoff in relevance feedback

机译:一种在相关反馈中优化勘探与开发权衡的学习方法

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摘要

Relevance feedback is an effective technique for improving search accuracy in interactive information retrieval. In this paper, we study an interesting optimization problem in interactive feedback that aims at optimizing the tradeoff between presenting search results with the highest immediate utility to a user (but not necessarily most useful for collecting feedback information) and presenting search results with the best potential for collecting useful feedback information (but not necessarily the most useful documents from a user’s perspective). Optimizing such an exploration–exploitation tradeoff is key to the optimization of the overall utility of relevance feedback to a user in the entire session of relevance feedback. We formally frame this tradeoff as a problem of optimizing the diversification of search results since relevance judgments on more diversified results have been shown to be more useful for relevance feedback. We propose a machine learning approach to adaptively optimizing the diversification of search results for each query so as to optimize the overall utility in an entire session. Experiment results on three representative retrieval test collections show that the proposed learning approach can effectively optimize the exploration–exploitation tradeoff and outperforms the traditional relevance feedback approach which only does exploitation without exploration.
机译:相关性反馈是一种用于提高交互式信息检索中搜索精度的有效技术。在本文中,我们研究了交互式反馈中一个有趣的优化问题,该问题旨在优化在向用户展示具有最高即时效用的搜索结果(但不一定对收集反馈信息最有用)与展示具有最大潜力的搜索结果之间的权衡用于收集有用的反馈信息(但从用户的角度来看不一定是最有用的文档)。优化这样的探索与开发权衡是优化相关性反馈在整个相关性反馈过程中对用户的总体效用的关键。我们正式将这种权衡考虑为优化搜索结果多样化的一个问题,因为对更多样化结果的相关性判断已显示出对相关性反馈更为有用。我们提出了一种机器学习方法,可以针对每个查询自适应地优化搜索结果的多样性,从而优化整个会话的整体效用。在三个具有代表性的检索测试集合上的实验结果表明,所提出的学习方法可以有效地优化勘探与开发的权衡,并且优于仅进行勘探而不进行勘探的传统相关反馈方法。

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