首页    期刊浏览 2024年12月01日 星期日
登录注册

文章基本信息

  • 标题:Sequential Bayesian Experimental Design for Implicit Models via Mutual Information
  • 本地全文:下载
  • 作者:Steven Kleinegesse ; Christopher Drovandi ; Michael U. Gutmann
  • 期刊名称:Bayesian Analysis
  • 印刷版ISSN:1931-6690
  • 电子版ISSN:1936-0975
  • 出版年度:2021
  • 卷号:16
  • 期号:3
  • 页码:773-802
  • DOI:10.1214/20-BA1225
  • 语种:English
  • 出版社:International Society for Bayesian Analysis
  • 摘要:Bayesian experimental design (BED) is a framework that uses statistical models and decision making under uncertainty to optimise the cost and performance of a scientific experiment. Sequential BED, as opposed to static BED, considers the scenario where we can sequentially update our beliefs about the model parameters through data gathered in the experiment. A class of models of particular interest for the natural and medical sciences are implicit models, where the data generating distribution is intractable, but sampling from it is possible. Even though there has been a lot of work on static BED for implicit models in the past few years, the notoriously difficult problem of sequential BED for implicit models has barely been touched upon. We address this gap in the literature by devising a novel sequential design framework for parameter estimation that uses the Mutual Information (MI) between model parameters and simulated data as a utility function to find optimal experimental designs, which has not been done before for implicit models. Our approach uses likelihood-free inference by ratio estimation to simultaneously estimate posterior distributions and the MI. During the sequential BED procedure we utilise Bayesian optimisation to help us optimise the MI utility. We find that our framework is efficient for the various implicit models tested, yielding accurate parameter estimates after only a few iterations.
  • 关键词:62K05; 62L05; Approximate Bayesian Computation; Bayesian experimental design; implicit models; likelihood-free inference; mutual information
国家哲学社会科学文献中心版权所有