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Driven by steady progress in generative modeling, simulation-based inference (SBI) has enabled inference over stochastic simulators. However, recent work has demonstrated that model misspecification can harm SBI's reliability. This work introduces robust posterior estimation (ROPE), a framework that overcomes model misspecification with a small real-world calibration set of ground truth parameter measurements. We formalize the misspecification gap as the solution of an optimal transport problem between learned representations of real-world and simulated observations. Assuming the prior distribution over the parameters of interest is known and well-specified, our method offers a controllable balance between calibrated uncertainty and informative inference under all possible misspecifications of the simulator. Our empirical results on four synthetic tasks and two real-world problems demonstrate that ROPE outperforms baselines and consistently returns informative and calibrated credible intervals.
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Wehenkel et al. (Tue,) studied this question.
synapsesocial.com/papers/68e6a293b6db6435876265fe — DOI: https://doi.org/10.48550/arxiv.2405.08719
Antoine Wehenkel
Apple (Israel)
Juan L. Gamella
Ozan Şener
Intel (United States)
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