TL;DR
This paper introduces a likelihood-free inference method based on ratio estimation via logistic regression, allowing automatic selection of relevant summary statistics without restrictive assumptions, and applicable to complex models.
Contribution
It proposes a novel likelihood-free inference approach that uses ratio estimation and regularized logistic regression for automatic summary statistic selection, improving flexibility over existing methods.
Findings
Effective in high-dimensional and nonlinear models
Enables automatic selection of relevant summary statistics
Performs well on challenging stochastic systems
Abstract
We consider the problem of parametric statistical inference when likelihood computations are prohibitively expensive but sampling from the model is possible. Several so-called likelihood-free methods have been developed to perform inference in the absence of a likelihood function. The popular synthetic likelihood approach infers the parameters by modelling summary statistics of the data by a Gaussian probability distribution. In another popular approach called approximate Bayesian computation, the inference is performed by identifying parameter values for which the summary statistics of the simulated data are close to those of the observed data. Synthetic likelihood is easier to use as no measure of `closeness' is required but the Gaussianity assumption is often limiting. Moreover, both approaches require judiciously chosen summary statistics. We here present an alternative inference…
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