A Simulated Annealing Approach to Bayesian Inference

09/17/2015
by   Carlo Albert, et al.
0

A generic algorithm for the extraction of probabilistic (Bayesian) information about model parameters from data is presented. The algorithm propagates an ensemble of particles in the product space of model parameters and outputs. Each particle update consists of a random jump in parameter space followed by a simulation of a model output and a Metropolis acceptance/rejection step based on a comparison of the simulated output to the data. The distance of a particle to the data is interpreted as an energy and the algorithm is reducing the associated temperature of the ensemble such that entropy production is minimized. If this simulated annealing is not too fast compared to the mixing speed in parameter space, the parameter marginal of the ensemble approaches the Bayesian posterior distribution. Annealing is adaptive and depends on certain extensive thermodynamic quantities that can easily be measured throughout run-time. In the general case, we propose annealing with a constant entropy production rate, which is optimal as long as annealing is not too fast. For the practically relevant special case of no prior knowledge, we derive an optimal fast annealing schedule with a non-constant entropy production rate. The algorithm does not require the calculation of the density of the model likelihood, which makes it interesting for Bayesian parameter inference with stochastic models, whose likelihood functions are typically very high dimensional integrals.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/08/2017

Variable Annealing Length and Parallelism in Simulated Annealing

In this paper, we propose: (a) a restart schedule for an adaptive simula...
research
02/22/2014

Scaling Nonparametric Bayesian Inference via Subsample-Annealing

We describe an adaptation of the simulated annealing algorithm to nonpar...
research
05/02/2018

Flexible Density Tempering Approaches for State Space Models with an Application to Factor Stochastic Volatility Models

Duan (2015) propose a tempering or annealing approach to Bayesian infere...
research
02/21/2020

Split-BOLFI for for misspecification-robust likelihood free inference in high dimensions

Likelihood-free inference for simulator-based statistical models has rec...
research
03/29/2020

Special Function Methods for Bursty Models of Transcription

We explore a Markov model used in the analysis of gene expression, invol...
research
01/29/2019

An accelerated variant of simulated annealing that converges under fast cooling

Given a target function U to minimize on a finite state space X, a propo...
research
03/06/2013

A Probabilistic Algorithm for Calculating Structure: Borrowing from Simulated Annealing

We have developed a general Bayesian algorithm for determining the coord...

Please sign up or login with your details

Forgot password? Click here to reset