Learning Summary Statistics for Bayesian Inference with Autoencoders

Author:

Albert Carlo1,Ulzega Simone2,Ozdemir Firat34,Perez-Cruz Fernando3,Mira Antonietta56

Affiliation:

1. Swiss Federal Institute of Aquatic Science and Technology

2. Zurich University of Applied Sciences

3. Swiss Data Science Center

4. Swiss Federal Institute of Technology in Zurich (ETH)

5. Università della Svizzera italiana

6. University of Insubria

Abstract

For stochastic models with intractable likelihood functions, approximate Bayesian computation offers a way of approximating the true posterior through repeated comparisons of observations with simulated model outputs in terms of a small set of summary statistics. These statistics need to retain the information that is relevant for constraining the parameters but cancel out the noise. They can thus be seen as thermodynamic state variables, for general stochastic models. For many scientific applications, we need strictly more summary statistics than model parameters to reach a satisfactory approximation of the posterior. Therefore, we propose to use a latent representation of deep neural networks based on Autoencoders as summary statistics. To create an incentive for the encoder to encode all the parameter-related information but not the noise, we give the decoder access to explicit or implicit information on the noise that has been used to generate the training data. We validate the approach empirically on two types of stochastic models.

Publisher

Stichting SciPost

Subject

General Computer Science

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