Towards Reliable Simulation-based Inference
Arnaud Delaunoy

TL;DR
This paper investigates the approximation errors in simulation-based inference, introduces methods like balancing and Bayesian neural networks to improve calibration, and demonstrates their effectiveness in reducing overconfidence in statistical analysis.
Contribution
It presents novel regularization techniques and Bayesian neural network priors to mitigate overconfidence in simulation-based inference, enhancing reliability of statistical conclusions.
Findings
Balancing reduces overconfidence in neural ratio estimation.
Bayesian neural networks with tailored priors improve calibration.
Empirical results show decreased overconfidence with proposed methods.
Abstract
Scientific knowledge expands by observing the world, hypothesizing some theories about it, and testing them against collected data. When those theories take the form of statistical models, statistical analyses are involved in the process of testing and refining scientific hypotheses. In this thesis, we focus on statistical models that take the form of scientific simulators and provide background about how machine learning can be used for statistical analyses in this context. The first part of this thesis is about showing empirically that performing statistical analyses with machine learning involves a degree of approximation. Specifically, all statistical analyses involve a level of uncertainty in the conclusions drawn, and we show that approximations can lead to overconfident conclusions. We draw caution regarding such overconfident conclusions and introduce a criterion to diagnose…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Explainable Artificial Intelligence (XAI) · Model Reduction and Neural Networks
