Efficient identification of informative features in simulation-based inference
Jonas Beck, Michael Deistler, Yves Bernaerts, Jakob Macke, Philipp, Berens

TL;DR
This paper introduces an efficient method to identify the most informative features in simulation-based Bayesian inference, enabling better understanding of feature contributions without extensive re-computation.
Contribution
The authors propose a post-hoc marginalization technique within neural likelihood estimation to assess feature importance in SBI, reducing computational costs.
Findings
Effective feature importance assessment in Hodgkin-Huxley models
Method reduces computational expense compared to naive approaches
Applicable to various scientific fields using SBI
Abstract
Simulation-based Bayesian inference (SBI) can be used to estimate the parameters of complex mechanistic models given observed model outputs without requiring access to explicit likelihood evaluations. A prime example for the application of SBI in neuroscience involves estimating the parameters governing the response dynamics of Hodgkin-Huxley (HH) models from electrophysiological measurements, by inferring a posterior over the parameters that is consistent with a set of observations. To this end, many SBI methods employ a set of summary statistics or scientifically interpretable features to estimate a surrogate likelihood or posterior. However, currently, there is no way to identify how much each summary statistic or feature contributes to reducing posterior uncertainty. To address this challenge, one could simply compare the posteriors with and without a given feature included in the…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Neural Networks and Applications · Machine Learning and Algorithms
