LGCVMEFeb 24

Sample-efficient evidence estimation of score based priors for model selection

arXiv:2602.20549v11 citationsh-index: 1
AI Analysis

This addresses the challenge of prior selection in Bayesian inverse problems for imaging applications, such as black hole imaging, though it is incremental as it builds on existing diffusion posterior sampling methods.

The paper tackles the problem of selecting appropriate priors for ill-posed imaging inverse problems by proposing an estimator for model evidence with diffusion priors, which is otherwise intractable, achieving accurate results with as few as 20 samples.

The choice of prior is central to solving ill-posed imaging inverse problems, making it essential to select one consistent with the measurements $y$ to avoid severe bias. In Bayesian inverse problems, this could be achieved by evaluating the model evidence $p(y \mid M)$ under different models $M$ that specify the prior and then selecting the one with the highest value. Diffusion models are the state-of-the-art approach to solving inverse problems with a data-driven prior; however, directly computing the model evidence with respect to a diffusion prior is intractable. Furthermore, most existing model evidence estimators require either many pointwise evaluations of the unnormalized prior density or an accurate clean prior score. We propose \method, an estimator of the model evidence of a diffusion prior by integrating over the time-marginals of posterior sampling methods. Our method leverages the large amount of intermediate samples naturally obtained during the reverse diffusion sampling process to obtain an accurate estimation of the model evidence using only a handful of posterior samples (e.g., 20). We also demonstrate how to implement our estimator in tandem with recent diffusion posterior sampling methods. Empirically, our estimator matches the model evidence when it can be computed analytically, and it is able to both select the correct diffusion model prior and diagnose prior misfit under different highly ill-conditioned, non-linear inverse problems, including a real-world black hole imaging problem.

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