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PriorGuide: Test-Time Prior Adaptation for Simulation-Based Inference

About

Amortized simulator-based inference offers a powerful framework for tackling Bayesian inference in computational fields such as engineering or neuroscience, increasingly leveraging modern generative methods like diffusion models to map observed data to model parameters or future predictions. These approaches yield posterior or posterior-predictive samples for new datasets without requiring further simulator calls after training on simulated parameter-data pairs. However, their applicability is often limited by the prior distribution(s) used to generate model parameters during this training phase. To overcome this constraint, we introduce PriorGuide, a technique specifically designed for diffusion-based amortized inference methods. PriorGuide leverages a novel guidance approximation that enables flexible adaptation of the trained diffusion model to new priors at test time, crucially without costly retraining. This allows users to readily incorporate updated information or expert knowledge post-training, enhancing the versatility of pre-trained inference models.

Yang Yang, Severi Rissanen, Paul E. Chang, Nasrulloh Loka, Daolang Huang, Arno Solin, Markus Heinonen, Luigi Acerbi• 2025

Related benchmarks

TaskDatasetResultRank
Data PredictionOUP
RMSE0.21
9
Data PredictionTurin
RMSE0.13
9
Posterior InferenceTwo Moons q_strong(theta)
RMSE0.09
6
Posterior InferenceOUP q_mixture(theta)
RMSE0.15
3
Posterior InferenceTurin q_mild(theta)
RMSE0.14
3
Posterior InferenceTurin q_strong(theta)
RMSE0.06
3
Posterior InferenceTurin q_mixture(theta)
RMSE0.13
3
Posterior InferenceBCI q_strong(theta)
RMSE0.25
3
Posterior InferenceBCI q_mixture(theta)
RMSE0.87
3
Posterior InferenceTwo Moons q_mild(theta)
RMSE0.37
3
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