Model Selection for Simulator-based Statistical Models: A Kernel Approach
Machine Learning
2019-02-08 v1 Machine Learning
Abstract
We propose a novel approach to model selection for simulator-based statistical models. The proposed approach defines a mixture of candidate models, and then iteratively updates the weight coefficients for those models as well as the parameters in each model simultaneously; this is done by recursively applying Bayes' rule, using the recently proposed kernel recursive ABC algorithm. The practical advantage of the method is that it can be used even when a modeler lacks appropriate prior knowledge about the parameters in each model. We demonstrate the effectiveness of the proposed approach with a number of experiments, including model selection for dynamical systems in ecology and epidemiology.
Cite
@article{arxiv.1902.02517,
title = {Model Selection for Simulator-based Statistical Models: A Kernel Approach},
author = {Takafumi Kajihara and Motonobu Kanagawa and Yuuki Nakaguchi and Kanishka Khandelwal and Kenji Fukumiziu},
journal= {arXiv preprint arXiv:1902.02517},
year = {2019}
}
Comments
32 pages