使用Dirichlet过程先验评估离散选择模型的异质性

Q4 Business, Management and Accounting
Jin Gyo Kim, U. Menzefricke, F. Feinberg
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引用次数: 42

摘要

有限正态混合模型已成为评估选择模型异质性的主要方法。虽然它通过允许成分内部的可变性扩展了经典的混合模型,但它需要对相对大量的模型进行单独估计,并且需要相当困难的测试程序来确定“正确”的混合成分数量。我们提出了一个非常一般的公式,基于狄利克雷过程皮尔逊,它产生的数量和组成的混合成分的后检,避免了需要的事后测试程序,并能够近似任何目标异质性分布。采用Stephens(2000)算法可以确定“实质上”不同的聚类,也可以避免标签切换和重叠混合引起的问题。这些方法在液体洗涤剂的模拟数据和ac尼尔森扫描仪面板数据上都得到了说明。我们发现,在实践中,充分代表异质性分布所需的大量混合成分可以减少到数量少得多的管理相关部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Heterogeneity in Discrete Choice Models Using a Dirichlet Process Prior
The finite normal mixture model has emerged as a dominant methodology for assessing heterogeneity in choice models. Although it extends the classic mixture models by allowing within component variablility, it requires that a relatively large number of models be separately estimated and fairly difficult test procedures to determine the “correct” number of mixing components. We present a very general formulation, based on Dirichlet Process Piror, which yields the number and composition of mixing components a posteriori, obviating the need for post hoc test procedures and is capable of approximating any target heterogeneity distribution. Adapting Stephens’ (2000) algorithm allows the determination of ‘substantively’ different clusters, as well as a way to sidestep problems arising from label-switching and overlapping mixtures. These methods are illustrated both on simulated data and A.C. Nielsen scanner panel data for liquid detergents. We find that the large number of mixing components required to adequately represent the heterogeneity distribution can be reduced in practice to a far smaller number of segments of managerial relevance.
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来源期刊
Review of Marketing Science
Review of Marketing Science Business, Management and Accounting-Marketing
CiteScore
1.10
自引率
0.00%
发文量
11
期刊介绍: The Review of Marketing Science (ROMS) is a peer-reviewed electronic-only journal whose mission is twofold: wide and rapid dissemination of the latest research in marketing, and one-stop review of important marketing research across the field, past and present. Unlike most marketing journals, ROMS is able to publish peer-reviewed articles immediately thanks to its electronic format. Electronic publication is designed to ensure speedy publication. It works in a very novel and simple way. An issue of ROMS opens and then closes after a year. All papers accepted during the year are part of the issue, and appear as soon as they are accepted. Combined with the rapid peer review process, this makes for quick dissemination.
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