基于行为的算法定价

IF 4.5 3区 经济学 Q1 ECONOMICS Information Economics and Policy Pub Date : 2024-03-01 DOI:10.1016/j.infoecopol.2024.101081
Antoine Dubus
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引用次数: 0

摘要

本文研究了当企业收集数据向其过去的客户收取个性化价格时,算法定价对市场竞争的影响。定价算法为每家公司提供了丰富的定价策略,这些策略结合了一级和三级价格歧视:它们可以为每一位过去的客户选择向其收取个性化价格还是同质价格。每家公司的最优定位策略包括:对支付意愿最高的过去客户收取个性化价格,对其余消费者收取同质价格,包括公司掌握信息的低估值过去客户。与传统模型中企业以所有过去的顾客为目标相比,这种目标定位策略既能最大限度地提取租金,又能缓和企业间的竞争。反过来,在基于行为的算法定价中,压价和挖角行为也难以为继,从而带来更大的行业利润。
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Behavior-based algorithmic pricing

This article studies the impact of algorithmic pricing on market competition when firms collect data to charge personalized prices to their past customers. Pricing algorithms offer to each firm a rich set of pricing strategies combining first and third-degree price discrimination: they can choose for each of their past customers whether to charge them personalized or homogeneous prices. The optimal targeting strategy of each firm consists in charging personalized prices to past customers with the highest willingness to pay and a homogeneous price to the remaining consumers, including past customers with a low valuation on whom a firm has information. This targeting strategy maximizes rent extraction while softening competition between firms compared to classical models where firms target all past customers. In turn, price-undercutting and poaching practices are not sustainable with behavior-based algorithmic pricing, resulting in greater industry profits.

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来源期刊
CiteScore
5.00
自引率
10.70%
发文量
27
期刊介绍: IEP is an international journal that aims to publish peer-reviewed policy-oriented research about the production, distribution and use of information, including these subjects: the economics of the telecommunications, mass media, and other information industries, the economics of innovation and intellectual property, the role of information in economic development, and the role of information and information technology in the functioning of markets. The purpose of the journal is to provide an interdisciplinary and international forum for theoretical and empirical research that addresses the needs of other researchers, government, and professionals who are involved in the policy-making process. IEP publishes research papers, short contributions, and surveys.
期刊最新文献
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