Hainy Markus, Price David J, Restif Olivier, Drovandi Christopher
Department of Applied Statistics, Johannes Kepler University, 4040 Linz, Austria.
School of Mathematical Sciences, Queensland University of Technology, Brisbane, QLD 4000 Australia.
Stat Comput. 2022;32(2):25. doi: 10.1007/s11222-022-10078-2. Epub 2022 Feb 22.
Performing optimal Bayesian design for discriminating between competing models is computationally intensive as it involves estimating posterior model probabilities for thousands of simulated data sets. This issue is compounded further when the likelihood functions for the rival models are computationally expensive. A new approach using supervised classification methods is developed to perform Bayesian optimal model discrimination design. This approach requires considerably fewer simulations from the candidate models than previous approaches using approximate Bayesian computation. Further, it is easy to assess the performance of the optimal design through the misclassification error rate. The approach is particularly useful in the presence of models with intractable likelihoods but can also provide computational advantages when the likelihoods are manageable.
The online version contains supplementary material available at 10.1007/s11222-022-10078-2.
为区分竞争模型执行最优贝叶斯设计计算量很大,因为它涉及为数千个模拟数据集估计后验模型概率。当竞争模型的似然函数计算成本很高时,这个问题会进一步恶化。开发了一种使用监督分类方法的新方法来执行贝叶斯最优模型判别设计。与之前使用近似贝叶斯计算的方法相比,这种方法需要从候选模型进行的模拟要少得多。此外,通过误分类错误率很容易评估最优设计的性能。该方法在存在具有难处理似然性的模型时特别有用,但当似然性可控时也可以提供计算优势。
在线版本包含可在10.1007/s11222-022-10078-2获取的补充材料。