Risk related brain regions detection and individual risk classification with 3D image FPCA

IF 1.3 Q2 STATISTICS & PROBABILITY
Ying Chen, W. Härdle, Qiang He, Piotr Majer
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引用次数: 2

Abstract

Abstract Understanding how people make decisions from risky choices has attracted increasing attention of researchers in economics, psychology and neuroscience. While economists try to evaluate individual’s risk preference through mathematical modeling, neuroscientists answer the question by exploring the neural activities of the brain. We propose a model-free method, 3-dimensional image functional principal component analysis (3DIF), to provide a connection between active risk related brain region detection and individual’s risk preference. The 3DIF methodology is directly applicable to 3-dimensional image data without artificial vectorization or mapping and simultaneously guarantees the contiguity of risk related brain regions rather than discrete voxels. Simulation study evidences an accurate and reasonable region detection using the 3DIF method. In real data analysis, five important risk related brain regions are detected, including parietal cortex (PC), ventrolateral prefrontal cortex (VLPFC), lateral orbifrontal cortex (lOFC), anterior insula (aINS) and dorsolateral prefrontal cortex (DLPFC), while the alternative methods only identify limited risk related regions. Moreover, the 3DIF method is useful for extraction of subjective specific signature scores that carry explanatory power for individual’s risk attitude. In particular, the 3DIF method perfectly classifies both strongly and weakly risk averse subjects for in-sample analysis. In out-of-sample experiment, it achieves 73 -88  overall accuracy, among which 90 -100  strongly risk averse subjects and 49 -71  weakly risk averse subjects are correctly classified with leave-k-out cross validations.
基于3D图像FPCA的风险相关脑区检测和个体风险分类
了解人们如何从风险选择中做出决策已经引起了经济学、心理学和神经科学研究者越来越多的关注。经济学家试图通过数学建模来评估个人的风险偏好,而神经科学家则通过探索大脑的神经活动来回答这个问题。我们提出了一种无模型的方法——三维图像功能主成分分析(3DIF),以提供活跃风险相关脑区检测与个体风险偏好之间的联系。3DIF方法直接适用于三维图像数据,无需人工矢量化或映射,同时保证了与风险相关的大脑区域的连续性,而不是离散的体素。仿真研究证明了采用3DIF方法进行区域检测是准确合理的。在实际数据分析中,检测到5个重要的风险相关脑区,包括顶叶皮质(PC)、腹外侧前额叶皮质(VLPFC)、外侧眶额皮质(lOFC)、前脑岛(aINS)和背外侧前额叶皮质(DLPFC),而替代方法只能识别有限的风险相关脑区。此外,3DIF方法可用于提取对个体风险态度具有解释力的主观特异性签名分数。特别是,3DIF方法完美地对样本内分析的强烈和弱风险厌恶受试者进行分类。在样本外实验中,总体准确率达到73 -88,其中90 -100名强风险厌恶受试者和49 -71名弱风险厌恶受试者通过留k-out交叉验证正确分类。
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来源期刊
Statistics & Risk Modeling
Statistics & Risk Modeling STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
6.70%
发文量
6
期刊介绍: Statistics & Risk Modeling (STRM) aims at covering modern methods of statistics and probabilistic modeling, and their applications to risk management in finance, insurance and related areas. The journal also welcomes articles related to nonparametric statistical methods and stochastic processes. Papers on innovative applications of statistical modeling and inference in risk management are also encouraged. Topics Statistical analysis for models in finance and insurance Credit-, market- and operational risk models Models for systemic risk Risk management Nonparametric statistical inference Statistical analysis of stochastic processes Stochastics in finance and insurance Decision making under uncertainty.
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