Combining Query Performance Predictors: A Reproducibility Study
March 31, 2025 Β· Declared Dead Β· π European Conference on Information Retrieval
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Authors
Sourav Saha, Suchana Datta, Dwaipayan Roy, Mandar Mitra, Derek Greene
arXiv ID
2503.24251
Category
cs.IR: Information Retrieval
Citations
2
Venue
European Conference on Information Retrieval
Last Checked
4 months ago
Abstract
A large number of approaches to Query Performance Prediction (QPP) have been proposed over the last two decades. As early as 2009, Hauff et al. [28] explored whether different QPP methods may be combined to improve prediction quality. Since then, significant research has been done both on QPP approaches, as well as their evaluation. This study revisits Hauff et al.s work to assess the reproducibility of their findings in the light of new prediction methods, evaluation metrics, and datasets. We expand the scope of the earlier investigation by: (i) considering post-retrieval methods, including supervised neural techniques (only pre-retrieval techniques were studied in [28]); (ii) using sMARE for evaluation, in addition to the traditional correlation coefficients and RMSE; and (iii) experimenting with additional datasets (Clueweb09B and TREC DL). Our results largely support previous claims, but we also present several interesting findings. We interpret these findings by taking a more nuanced look at the correlation between QPP methods, examining whether they capture diverse information or rely on overlapping factors.
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