A confidence machine for sparse high‐order interaction model

In predictive modelling for high‐stake decision‐making, predictors must be not only accurate but also reliable. Conformal prediction (CP) is a promising approach for obtaining the coverage of prediction results with fewer theoretical assumptions. To obtain the prediction set by so‐called full‐CP, we...

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Bibliographic Details
Published inStat (International Statistical Institute) Vol. 13; no. 1
Main Authors Das, Diptesh, Ndiaye, Eugene, Takeuchi, Ichiro
Format Journal Article
LanguageEnglish
Published 01.01.2024
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Summary:In predictive modelling for high‐stake decision‐making, predictors must be not only accurate but also reliable. Conformal prediction (CP) is a promising approach for obtaining the coverage of prediction results with fewer theoretical assumptions. To obtain the prediction set by so‐called full‐CP, we need to refit the predictor for all possible values of prediction results, which is only possible for simple predictors. For complex predictors such as random forests (RFs) or neural networks (NNs), split‐CP is often employed where the data is split into two parts: one part for fitting and another for computing the prediction set. Unfortunately, because of the reduced sample size, split‐CP is inferior to full‐CP both in fitting as well as prediction set computation. In this paper, we develop a full‐CP of sparse high‐order interaction model (SHIM), which is sufficiently flexible as it can take into account high‐order interactions among variables. We resolve the computational challenge for full‐CP of SHIM by introducing a novel approach called homotopy mining. Through numerical experiments, we demonstrate that SHIM is as accurate as complex predictors such as RF and NN and enjoys the superior statistical power of full‐CP.
Bibliography:Most of the work of this article was done while Diptesh Das was affiliated with Department of Mechanical System Engineering, Nagoya University, Japan. However, Diptesh Das is currently affiliatied with Department of Computational Biology and Medical Sciences, University of Tokyo, Japan. Eugene Ndiaye's affiliation has also been changed, and he is currently affiliated with Machine Learning Group, Apple, Paris, France. All correspondence should be directed to current email address of Diptesh Das <diptesh.das@edu.k.u‐ tokyo.ac.jp> or (Ichiro Takeuchi,<ichiro.takeuchi@mae.nagoya‐ u.ac.jp>).
ISSN:2049-1573
2049-1573
DOI:10.1002/sta4.633