Approximate Bayesian Computation 论文

2013PLoS Computational Biology引用 672顶会
Markov Chains and Monte Carlo MethodsStochastic processes and statistical mechanicsBayesian Methods and Mixture Models

详细信息

发表期刊/会议
PLoS Computational Biology
发表日期
2013-01-10
发表年份
2013

关键词

Markov Chains and Monte Carlo MethodsStochastic processes and statistical mechanicsBayesian Methods and Mixture Models

摘要

Approximate Bayesian computation (ABC) constitutes a class of computational methods rooted in Bayesian statistics. In all model-based statistical inference, the likelihood function is of central importance, since it expresses the probability of the observed data under a particular statistical model, and thus quantifies the support data lend to particular values of parameters and to choices among different models. For simple models, an analytical formula for the likelihood function can typically be derived. However, for more complex models, an analytical formula might be elusive or the likelihood function might be computationally very costly to evaluate. ABC methods bypass the evaluation of the likelihood function. In this way, ABC methods widen the realm of models for which statistical inference can be considered. ABC methods are mathematically well-founded, but they inevitably make assumptions and approximations whose impact needs to be carefully assessed. Furthermore, the wider application domain of ABC exacerbates the challenges of parameter estimation and model selection. ABC has rapidly gained popularity over the last years and in particular for the analysis of complex problems arising in biological sciences (e.g., in population genetics, ecology, epidemiology, and systems biology).