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Risk patterns and correlated brain activities: Multidimensional statistical analysis of fMRI data with application to risk patterns

机译:风险模式和相关的大脑活动:fmRI数据的多维统计分析与风险模式的应用

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摘要

Decision making usually involves uncertainty and risk. Understanding which parts of the human brain are activated during decisions under risk and which neural processes underly (risky) investment decisions are important goals in neuroeconomics. Here, we reanalyze functional magnetic resonance imaging (fMRI) data on 17 subjects which were exposed to an investment decision task from Mohr et al. (2010b). We obtain a time series of three-dimensional images of the blood-oxygen-level dependent (BOLD) fMRI signals. Our goal is to capture the dynamic behavior of specific brain regions of all subjects in this high-dimensional time series data, by a flexible factor approach resulting in a low dimensional representation. We apply a panel version of the dynamic semiparametric factor model (DSFM) presented in Park et al. (2009) and identify task-related activations in space and dynamics in time. Further, we classify the risk attitudes of all subjects based on the estimated lowdimensional time series. Our classification analysis successfully confirms the estimated risk attitudes derived directly from subjects' decision behavior. Keywords: risk, risk attitude, fMRI, decision making, medial orbifrontal cortex, semiparametric model, factor structure, SVMDecision making usually involves uncertainty and risk. Understanding which parts of the human brain are activated during decisions under risk and which neural processes underly (risky) investment decisions are important goals in neuroeconomics. Here, we reanalyze functional magnetic resonance imaging (fMRI) data on 17 subjects which were exposed to an investment decision task from Mohr et al. (2010b). We obtain a time series of three-dimensional images of the blood-oxygen-level dependent (BOLD) fMRI signals. Our goal is to capture the dynamic behavior of specific brain regions of all subjects in this high-dimensional time series data, by a exible factor approach resulting in a low dimensional representation. We apply a panel version of the dynamic semiparametric factor model (DSFM) presented in Park et al. (2009) and identify task-related activations in space and dynamics in time. Further, we classify the risk attitudes of all subjects based on the estimated lowdimensional time series. Our classification analysis successfully confirms the estimated risk attitudes derived directly from subjects' decision behavior.
机译:决策通常涉及不确定性和风险。理解在风险决策过程中激活了人类大脑的哪些部分,以及在(风险)投资决策过程中潜在的神经过程是神经经济学的重要目标。在这里,我们重新分析了17名受试者的功能性磁共振成像(fMRI)数据,这些受试者曾接受过Mohr等人的投资决策任务。 (2010b)。我们获得了血氧水平依赖性(BOLD)fMRI信号的三维图像的时间序列。我们的目标是通过一种灵活的因子方法来捕获低维表示,从而在此高维时间序列数据中捕获所有受试者特定大脑区域的动态行为。我们应用Park等人提出的动态半参数因子模型(DSFM)的面板版本。 (2009年),并确定与任务相关的空间激活和时间动态。此外,我们基于估计的低维时间序列对所有主题的风险态度进行分类。我们的分类分析成功地确认了直接从受试者的决策行为得出的估计风险态度。关键词:风险,风险态度,功能磁共振成像,决策,内侧双额叶皮层,半参数模型,因子结构,支持向量机决策通常涉及不确定性和风险。理解在风险决策过程中激活了人类大脑的哪些部分,以及在(风险)投资决策过程中潜在的神经过程是神经经济学的重要目标。在这里,我们重新分析了17名受试者的功能性磁共振成像(fMRI)数据,这些受试者曾接受过Mohr等人的投资决策任务。 (2010b)。我们获得了血氧水平依赖性(BOLD)fMRI信号的三维图像的时间序列。我们的目标是通过一种导致低维表示的可利用因子方法,在此高维时间序列数据中捕获所有受试者特定大脑区域的动态行为。我们应用Park等人提出的动态半参数因子模型(DSFM)的面板版本。 (2009年),并确定与任务相关的空间激活和时间动态。此外,我们基于估计的低维时间序列对所有主题的风险态度进行分类。我们的分类分析成功地确认了直接从受试者的决策行为得出的估计风险态度。

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