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arxiv: 1609.03508 · v5 · pith:QVKXRJRQnew · submitted 2016-09-12 · 📊 stat.ME · stat.CO

Likelihood-free stochastic approximation EM for inference in complex models

classification 📊 stat.ME stat.CO
keywords likelihoodmodelsstochasticlikelihood-freemodelsaemapproximationcomplex
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A maximum likelihood methodology for the parameters of models with an intractable likelihood is introduced. We produce a likelihood-free version of the stochastic approximation expectation-maximization (SAEM) algorithm to maximize the likelihood function of model parameters. While SAEM is best suited for models having a tractable "complete likelihood" function, its application to moderately complex models is a difficult or even impossible task. We show how to construct a likelihood-free version of SAEM by using the "synthetic likelihood" paradigm. Our method is completely plug-and-play, requires almost no tuning and can be applied to both static and dynamic models. Four simulation studies illustrate the method, including a stochastic differential equation model, a stochastic Lotka-Volterra model and data from $g$-and-$k$ distributions. MATLAB code is available as supplementary material.

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