Testing for no effect in regression problems: A permutation approach

Michał G. Ciszewski*, Jakob Söhl, Ton Leenen, Bart van Trigt, Geurt Jongbloed

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Often the question arises whether (Formula presented.) can be predicted based on (Formula presented.) using a certain model. Especially for highly flexible models such as neural networks one may ask whether a seemingly good prediction is actually better than fitting pure noise or whether it has to be attributed to the flexibility of the model. This paper proposes a rigorous permutation test to assess whether the prediction is better than the prediction of pure noise. The test avoids any sample splitting and is based instead on generating new pairings of (Formula presented.). It introduces a new formulation of the null hypothesis and rigorous justification for the test, which distinguishes it from the previous literature. The theoretical findings are applied both to simulated data and to sensor data of tennis serves in an experimental context. The simulation study underscores how the available information affects the test. It shows that the less informative the predictors, the lower the probability of rejecting the null hypothesis of fitting pure noise and emphasizes that detecting weaker dependence between variables requires a sufficient sample size.

Original languageEnglish
Article numbere12346
Number of pages21
JournalStatistica Neerlandica
Volume79
Issue number1
DOIs
Publication statusPublished - 2024

Keywords

  • permutation test
  • R2
  • regression
  • sensor data
  • testing for no effect

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