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Modeling preference evolution in discrete choice models: A Bayesian state-space approach

机译:在离散选择模型中建模偏好演化:贝叶斯状态空间方法

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We develop discrete choice models that account for parameter driven preference dynamics. Choice model parameters may change over time because of shifting market conditions or due to changes in attribute levels over time or because of consumer learning. In this paper we show how such preference evolution can be modeled using hierarchial Bayesian state space models of discrete choice. The main feature of our approach is that it allows for the simultaneous incorporation of multiple sources of preference and choice dynamics. We show how the state space approach can include state dependence, unobserved heterogeneity, and more importantly, temporal variability in preferences using a correlated sequence of population distributions. The proposed model is very general and nests commonly used choice models in the literature as special cases. We use Markov chain monte carlo methods for estimating model parameters and apply our methodology to a scanner data set containing household brand choices over an eight-year period. Our analysis indicates that preferences exhibit significant variation over the time-span of the data and that incorporating time-variation in parameters is crucial for appropriate inferences regarding the magnitude and evolution of choice elasticities. We also find that models that ignore time variation in parameters can yield misleading inferences about the impact of causal variables.
机译:我们开发了离散选择模型,这些模型考虑了参数驱动的偏好动态。选择模型参数可能会因市场条件变化或属性级别随时间变化或消费者学习而随时间变化。在本文中,我们展示了如何使用离散选择的层次贝叶斯状态空间模型来建模这种偏好演化。我们方法的主要特点是它允许同时合并多个偏好和选择动态源。我们展示了状态空间方法如何能够包括状态依赖性,未观察到的异质性,以及更重要的是使用人口分布的相关序列在偏好方面的时间变异性。所提出的模型非常笼统,并且在文献中嵌套了常用的选择模型作为特殊情况。我们使用马尔可夫链蒙特卡罗方法估计模型参数,并将我们的方法应用于包含八年内家庭品牌选择的扫描仪数据集。我们的分析表明,偏好在数据的时间跨度上表现出显着变化,并且将参数的时变合并对于有关选择弹性的大小和演变的适当推断至关重要。我们还发现,忽略参数随时间变化的模型可能会对因果变量的影响产生误导性推论。

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