利用通道级信息的扩展查询性能预测框架

Haggai Roitman
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引用次数: 14

摘要

研究表明,文档级检索后查询性能预测(QPP)方法最适合于短查询预测任务;这类方法在冗长(长而信息丰富)的查询预测设置中表现明显较差。为了解决查询长度之间的预测质量差距,我们提出了一个新的段落级检索后QPP框架。我们的实证分析表明,那些利用通道级信息的QPP方法更适合于详细的QPP设置。此外,我们提出的预测器同时利用文档级和段落级信息,提供了对查询长度不太敏感的更健壮的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Extended Query Performance Prediction Framework Utilizing Passage-Level Information
We show that document-level post-retrieval query performance prediction (QPP) methods are mostly suited for short query prediction tasks; such methods perform significantly worse in verbose (long and informative) query prediction settings. To address the prediction quality gap among query lengths, we propose a novel passage-level post-retrieval QPP framework. Our empirical analysis demonstrates that, those QPP methods that utilize passage-level information are much better suited for verbose QPP settings. Moreover, our proposed predictors, which utilize both document-level and passage-level information provide a more robust prediction which is less sensitive to query length.
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