2024
DOI: 10.1007/s10100-024-00932-1
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Does cross-validation work in telling rankings apart?

Balázs R. Sziklai,
Máté Baranyi,
Károly Héberger

Abstract: Although cross-validation (CV) is a standard technique in machine learning and data science, its efficacy remains largely unexplored in ranking environments. When evaluating the significance of differences, cross-validation is typically coupled with statistical testing, such as the Dietterich, Alpaydin, or Wilcoxon test. In this paper, we evaluate the power and false positive error rate of the Dietterich, Alpaydin, and Wilcoxon statistical tests combined with cross-validation each operating with folds ranging … Show more

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