Data‐enabled learning, network effects, and competitive advantage

IF 2.8 3区 经济学 Q1 ECONOMICS
Andrei Hagiu, Julian Wright
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引用次数: 36

Abstract

Abstract We model dynamic competition between firms which improve their products through learning from customer data, either by pooling different customers' data (across‐user learning) or by learning from repeated usage of the same customers (within‐user learning). We show how a firm's competitive advantage is affected by the shape of firms' learning functions, asymmetries between their learning functions, the extent of data accumulation, and customer beliefs. We also explore how public policies toward data sharing, user privacy, and killer data acquisitions affect competitive dynamics and efficiency. Finally, we show conditions under which a consumer coordination problem arises endogenously from data‐enabled learning.
数据支持学习、网络效应和竞争优势
我们模拟了公司之间的动态竞争,这些公司通过从客户数据中学习来改进产品,要么通过汇集不同的客户数据(跨用户学习),要么通过从重复使用的相同客户中学习(用户内学习)。我们展示了企业的竞争优势如何受到企业学习功能的形状、学习功能之间的不对称性、数据积累程度和客户信念的影响。我们还探讨了有关数据共享、用户隐私和杀手级数据获取的公共政策如何影响竞争动态和效率。最后,我们展示了消费者协调问题由数据支持学习内生产生的条件。
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来源期刊
CiteScore
4.60
自引率
4.30%
发文量
28
期刊介绍: The RAND Journal of Economics publishes theoretical and empirical research on industrial organization and closely related topics, including contracts, organizations, law and economics, and regulation. The RAND Journal of Economics, formerly the Bell Journal of Economics, is published quarterly by The RAND Corporation, in conjunction with Blackwell Publishing.
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