亚马逊市场算法定价的实证分析

Le Chen, A. Mislove, Christo Wilson
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引用次数: 171

摘要

电子商务的兴起开启了算法定价(也称为动态定价算法)的实际应用,卖家使用计算机算法设定价格。旅游网站和大型知名电子零售商已经采用了算法定价策略,但这些工具和技术现在也适用于小型卖家。虽然算法定价可以使商家更具竞争力,但它也带来了新的挑战。已经出现了这样的例子,即竞争性的算法定价软件以意想不到的方式相互作用,产生不可预测的价格,以及故意设计算法来实施价格操纵的情况。不幸的是,公众目前对算法定价算法的流行和行为缺乏全面的了解。在本研究中,我们开发了一种检测算法定价的方法,并使用它来实证分析它们在亚马逊市场上的流行程度和行为。我们收集了四个月的数据,涵盖销售1,641种畅销产品中的任何一种的所有商家。使用这个数据集,我们能够发现500多家卖家采用的算法定价策略。我们探讨了这些卖家的特点,并描述了这些策略对市场动态的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Analysis of Algorithmic Pricing on Amazon Marketplace
The rise of e-commerce has unlocked practical applications for algorithmic pricing (also called dynamic pricing algorithms), where sellers set prices using computer algorithms. Travel websites and large, well known e-retailers have already adopted algorithmic pricing strategies, but the tools and techniques are now available to small-scale sellers as well. While algorithmic pricing can make merchants more competitive, it also creates new challenges. Examples have emerged of cases where competing pieces of algorithmic pricing software interacted in unexpected ways and produced unpredictable prices, as well as cases where algorithms were intentionally designed to implement price fixing. Unfortunately, the public currently lack comprehensive knowledge about the prevalence and behavior of algorithmic pricing algorithms in-the-wild. In this study, we develop a methodology for detecting algorithmic pricing, and use it empirically to analyze their prevalence and behavior on Amazon Marketplace. We gather four months of data covering all merchants selling any of 1,641 best-seller products. Using this dataset, we are able to uncover the algorithmic pricing strategies adopted by over 500 sellers. We explore the characteristics of these sellers and characterize the impact of these strategies on the dynamics of the marketplace.
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