Bayesian indirect inference for models with intractable normalizing functions
收藏DataCite Commons2021-05-05 更新2024-07-28 收录
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https://tandf.figshare.com/articles/dataset/Bayesian_indirect_inference_for_models_with_intractable_normalizing_functions/12911133/1
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资源简介:
Inference for doubly intractable distributions is challenging because the intractable normalizing functions of these models include parameters of interest. Previous auxiliary variable MCMC algorithms are infeasible for multi-dimensional models with large data sets because they depend on expensive auxiliary variable simulation. We develop a fast Bayesian indirect algorithm by replacing an expensive auxiliary variable simulation from a probability model with a computationally cheap simulation from a surrogate model. We learn the relationship between the surrogate model parameters and the probability model parameters using Gaussian process approximations. We apply our methods to challenging examples, and illustrate that the algorithm addresses both computational and inferential challenges for doubly intractable distributions. Especially for a large social network model with 10 parameters, we show that our method can reduce computing time from about 2 weeks to 5 hours, compared to the previous method.
提供机构:
Taylor & Francis
创建时间:
2020-09-03



