Unbiased Low-Variance Estimators for Precision and Related Information Retrieval Effectiveness Measures

G. Cormack, Maura R. Grossman
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引用次数: 2

Abstract

This work describes an estimator from which unbiased measurements of precision, rank-biased precision, and cumulative gain may be derived from a uniform or non-uniform sample of relevance assessments. Adversarial testing supports the theory that our estimator yields unbiased low-variance measurements from sparse samples, even when used to measure results that are qualitatively different from those returned by known information retrieval methods. Our results suggest that test collections using sampling to select documents for relevance assessment yield more accurate measurements than test collections using pooling, especially for the results of retrieval methods not contributing to the pool.
精度和相关信息检索有效性度量的无偏低方差估计
这项工作描述了一个估计器,从该估计器中可以从相关评估的均匀或非均匀样本中获得精度,秩偏精度和累积增益的无偏测量。对抗性测试支持这样的理论,即我们的估计器从稀疏的样本中产生无偏的低方差测量,即使用于测量与已知信息检索方法返回的结果在质量上不同的结果。我们的结果表明,使用抽样来选择文档进行相关性评估的测试集合比使用池的测试集合产生更准确的测量结果,特别是对于不参与池的检索方法的结果。
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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