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A hierarchical Bayesian approach for examining heterogeneity in choice decisions

机译:一种用于检查选择决策中异质性的分层贝叶斯方法

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摘要

There is a vast behavioral decision theory literature that suggests different individuals may utilize and/or weigh different attributes of an object to form the basis of their opinions, attitudes, choices, and/or evaluations of such stimuli. This heterogeneity of information utilization and importance can be due to several different factors such as differing goals, level of expertise, contextual factors, knowledge accessibility, time pressure, involvement, mood states, task complexity, communication or influence of relevant others, etc. This phenomenon is particularly pertinent to the evaluation of stimuli involving large numbers of underlying attributes or features. We propose a new hierarchical Bayesian multivariate probit mixture model with variable selection accommodating such forms of choice heterogeneity. Based on a Monte Carlo simulation study, we demonstrate that the proposed model can successfully recover true parameters in a robust manner. Next, we provide a consumer psychology application involving consideration to buy choices for intended consumers of large Sports Utility Vehicles. The application illustrates that the proposed model outperforms several comparison benchmark choice models with respect to face validity and choice predictive validation performance. (C) 2017 Elsevier Inc. All rights reserved.
机译:有大量的行为决策理论文献表明,不同的个体可能会利用和/或权衡一个对象的不同属性,从而形成他们对此类刺激的观点、态度、选择和/或评估的基础。这种信息利用和重要性的异质性可能是由几个不同的因素造成的,例如不同的目标、专业水平、背景因素、知识可及性、时间压力、参与、情绪状态、任务复杂性、沟通或相关他人的影响,这种现象尤其适用于涉及大量潜在属性或特征的刺激评估。我们提出了一个新的分层贝叶斯多元概率混合模型,其中变量选择适应了这种形式的选择异质性。基于蒙特卡罗模拟研究,我们证明了该模型能够以鲁棒的方式成功地恢复真实参数。接下来,我们将提供一个消费者心理学应用程序,其中包括考虑为大型运动型多功能车的预期消费者购买选择。应用表明,该模型在人脸效度和选择预测验证性能方面优于几种比较基准选择模型。(C) 2017爱思唯尔公司版权所有。

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