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Bayesian model reduction and empirical Bayes for group (DCM) studies

机译:贝叶斯模型约简和经验贝叶斯群体(DCM)研究

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摘要

This technical note describes some Bayesian procedures for the analysis of group studies that use nonlinear models at the first (within-subject) level – e.g., dynamic causal models – and linear models at subsequent (between-subject) levels. Its focus is on using Bayesian model reduction to finesse the inversion of multiple models of a single dataset or a single (hierarchical or empirical Bayes) model of multiple datasets. These applications of Bayesian model reduction allow one to consider parametric random effects and make inferences about group effects very efficiently (in a few seconds). We provide the relatively straightforward theoretical background to these procedures and illustrate their application using a worked example. This example uses a simulated mismatch negativity study of schizophrenia. We illustrate the robustness of Bayesian model reduction to violations of the (commonly used) Laplace assumption in dynamic causal modelling and show how its recursive application can facilitate both classical and Bayesian inference about group differences. Finally, we consider the application of these empirical Bayesian procedures to classification and prediction.
机译:本技术说明介绍了一些用于贝类分析的贝叶斯程序,这些程序使用第一级(主题内)的非线性模型(例如,动态因果模型)和后续(主题间)级别的线性模型。它的重点是使用贝叶斯模型约简来精简单个数据集的多个模型或多个数据集的单个(分层或经验贝叶斯)模型的反演。贝叶斯模型简化的这些应用程序使人们可以考虑参数随机效应,并且可以非常有效地(在几秒钟之内)推断出群效应。我们为这些程序提供了相对简单的理论背景,并通过一个实例演示了它们的应用。本示例使用了精神分裂症的模拟失配阴性结果。我们说明了贝叶斯模型归约在动态因果模型建模中对违反(通常使用的)拉普拉斯假设的鲁棒性,并展示了其递归应用如何促进经典和贝叶斯关于群体差异的推论。最后,我们考虑将这些经验贝叶斯方法应用于分类和预测。

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