SymmPI: Predictive Inference for Data with Group Symmetries
December 26, 2023 Β· Declared Dead Β· π Journal of the Royal Statistical Society Series B: Statistical Methodology
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Authors
Edgar Dobriban, Mengxin Yu
arXiv ID
2312.16160
Category
stat.ME
Cross-listed
cs.LG,
math.ST,
stat.ML
Citations
11
Venue
Journal of the Royal Statistical Society Series B: Statistical Methodology
Last Checked
1 month ago
Abstract
Quantifying the uncertainty of predictions is a core problem in modern statistics. Methods for predictive inference have been developed under a variety of assumptions, often -- for instance, in standard conformal prediction -- relying on the invariance of the distribution of the data under special groups of transformations such as permutation groups. Moreover, many existing methods for predictive inference aim to predict unobserved outcomes in sequences of feature-outcome observations. Meanwhile, there is interest in predictive inference under more general observation models (e.g., for partially observed features) and for data satisfying more general distributional symmetries (e.g., rotationally invariant or coordinate-independent observations in physics). Here we propose SymmPI, a methodology for predictive inference when data distributions have general group symmetries in arbitrary observation models. Our methods leverage the novel notion of distributional equivariant transformations, which process the data while preserving their distributional invariances. We show that SymmPI has valid coverage under distributional invariance and characterize its performance under distribution shift, recovering recent results as special cases. We apply SymmPI to predict unobserved values associated to vertices in a network, where the distribution is unchanged under relabelings that keep the network structure unchanged. In several simulations in a two-layer hierarchical model, and in an empirical data analysis example, SymmPI performs favorably compared to existing methods.
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