Marković Dimitrije, Kiebel Stefan J
Department of Psychology, Technische Universität Dresden Dresden, Germany.
Front Comput Neurosci. 2016 Apr 20;10:33. doi: 10.3389/fncom.2016.00033. eCollection 2016.
Probabilistic models of decision making under various forms of uncertainty have been applied in recent years to numerous behavioral and model-based fMRI studies. These studies were highly successful in enabling a better understanding of behavior and delineating the functional properties of brain areas involved in decision making under uncertainty. However, as different studies considered different models of decision making under uncertainty, it is unclear which of these computational models provides the best account of the observed behavioral and neuroimaging data. This is an important issue, as not performing model comparison may tempt researchers to over-interpret results based on a single model. Here we describe how in practice one can compare different behavioral models and test the accuracy of model comparison and parameter estimation of Bayesian and maximum-likelihood based methods. We focus our analysis on two well-established hierarchical probabilistic models that aim at capturing the evolution of beliefs in changing environments: Hierarchical Gaussian Filters and Change Point Models. To our knowledge, these two, well-established models have never been compared on the same data. We demonstrate, using simulated behavioral experiments, that one can accurately disambiguate between these two models, and accurately infer free model parameters and hidden belief trajectories (e.g., posterior expectations, posterior uncertainties, and prediction errors) even when using noisy and highly correlated behavioral measurements. Importantly, we found several advantages of Bayesian inference and Bayesian model comparison compared to often-used Maximum-Likelihood schemes combined with the Bayesian Information Criterion. These results stress the relevance of Bayesian data analysis for model-based neuroimaging studies that investigate human decision making under uncertainty.
近年来,各种不确定性形式下的概率决策模型已被应用于众多行为学和基于模型的功能磁共振成像(fMRI)研究中。这些研究在更好地理解行为以及描绘不确定性决策中涉及的脑区功能特性方面取得了巨大成功。然而,由于不同的研究考虑了不同的不确定性决策模型,目前尚不清楚这些计算模型中哪一个能最好地解释所观察到的行为和神经成像数据。这是一个重要问题,因为不进行模型比较可能会诱使研究人员基于单一模型过度解读结果。在这里,我们描述了在实践中如何比较不同的行为模型,并测试基于贝叶斯和最大似然法的模型比较及参数估计的准确性。我们将分析重点放在两个成熟的分层概率模型上,它们旨在捕捉不断变化环境中信念的演变:分层高斯滤波器和变点模型。据我们所知,这两个成熟的模型从未在相同数据上进行过比较。我们通过模拟行为实验证明,即使使用有噪声且高度相关的行为测量数据,也能准确地区分这两个模型,并准确推断自由模型参数和隐藏的信念轨迹(例如后验期望、后验不确定性和预测误差)。重要的是,我们发现与常用的结合贝叶斯信息准则的最大似然法相比,贝叶斯推理和贝叶斯模型比较具有几个优势。这些结果强调了贝叶斯数据分析对于基于模型的神经成像研究的相关性,这类研究旨在探究不确定性下的人类决策。