基于伪反馈的检索查询性能预测

Haggai Roitman, Oren Kurland
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引用次数: 6

摘要

查询性能预测任务(query performance prediction task, QPP)是在没有相关性判断的情况下估计检索的有效性。先前的工作集中在基于表面级查询文档相似性(例如,查询似然)的检索方法的预测上。我们解决了基于伪反馈的检索方法的预测挑战,该方法利用初始检索来诱导新的查询模型;然后将查询模型用于第二次(最终)检索。我们建议的方法考虑了最初检索列表的假定有效性、它与最终检索列表的相似性以及后者的属性。实证评估表明了我们的方法的明显优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Query Performance Prediction for Pseudo-Feedback-Based Retrieval
The query performance prediction task (QPP) is estimating retrieval effectiveness in the absence of relevance judgments. Prior work has focused on prediction for retrieval methods based on surface level query-document similarities (e.g., query likelihood). We address the prediction challenge for pseudo-feedback-based retrieval methods which utilize an initial retrieval to induce a new query model; the query model is then used for a second (final) retrieval. Our suggested approach accounts for the presumed effectiveness of the initially retrieved list, its similarity with the final retrieved list and properties of the latter. Empirical evaluation demonstrates the clear merits of our approach.
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