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Robustly estimating heterogeneity in factorial data using Rashomon Partitions

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arxiv 2404.02141 v5 pith:TYXDASDE submitted 2024-04-02 stat.ME cs.LGecon.EMstat.COstat.ML

Robustly estimating heterogeneity in factorial data using Rashomon Partitions

classification stat.ME cs.LGecon.EMstat.COstat.ML
keywords heterogeneitymodelsdatamodelallowseffectsevidenceposterior
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In both observational data and randomized control trials, researchers select statistical models to articulate how the outcome of interest varies with combinations of observable covariates. Choosing a model that is too simple can obfuscate important heterogeneity in outcomes between covariate groups, while too much complexity risks identifying spurious patterns. In this paper, we propose a novel Bayesian framework for model uncertainty called Rashomon Partition Sets (RPSs). The RPS consists of all models that have posterior density close to the maximum a posteriori (MAP) model. We construct the RPS by enumeration, rather than sampling, which ensures that we explore all models with high evidence in the data, even if they offer dramatically different substantive explanations. We use a l0 prior, which allows the allows us to capture complex heterogeneity without imposing strong assumptions about the associations between effects, showing this prior is minimax optimal from an information-theoretic perspective. We characterize the approximation error of (functions of) parameters computed conditional on being in the RPS relative to the entire posterior. We propose an algorithm to enumerate the RPS from the class of models that are interpretable and unique, then provide bounds on the size of the RPS. We give simulation evidence along with three empirical examples: price effects on charitable giving, heterogeneity in chromosomal structure, and the introduction of microfinance.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Rashomon-Seeded Annealing for Robust Bayesian Inference in Factorial Designs

    stat.ME 2026-05 unverdicted novelty 6.0

    Rashomon-seeded annealing repurposes Rashomon sets as warm starts for annealed importance sampling to enable full posterior inference in factorial designs without exhaustive enumeration.

  2. Position: Prioritize Identifying Structure, Not Complex Models, for Scientific Discovery

    stat.ML 2026-05 unverdicted novelty 4.0

    Mechanistic learning from ML is generically underdetermined in high-dimensional proxy regimes, with LLMs worsening the problem by collapsing many possible explanations into one fluent narrative.