Economic Recommendation with Surplus Maximization

Yongfeng Zhang, Qi Zhao, Yi Zhang, D. Friedman, Min Zhang, Yiqun Liu, Shaoping Ma
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引用次数: 36

Abstract

A prime function of many major World Wide Web applications is Online Service Allocation (OSA), the function of matching individual consumers with particular services/goods (which may include loans or jobs as well as products) each with its own producer. In the applications of interest, consumers are free to choose, so OSA usually takes the form of personalized recommendation or search in practice. The performance metrics of recommender and search systems currently tend to focus on just one side of the match, in some cases the consumers (e.g. satisfaction) and in other cases the producers (e.g., profit). However, a sustainable OSA platform needs benefit both consumers and producers; otherwise the neglected party eventually may stop using it. In this paper, we show how to adapt economists' traditional idea of maximizing total surplus (the sum of consumer net benefit and producer profit) to the heterogeneous world of online service allocation, in an effort to promote the web intelligence for social good in online eco-systems. Modifications of traditional personalized recommendation algorithms enable us to apply Total Surplus Maximization (TSM) to three very different types of real-world tasks -- e-commerce, P2P lending and freelancing. The results for all three tasks suggest that TSM compares very favorably to currently popular approaches, to the benefit of both producers and consumers.
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盈余最大化的经济建议
许多主要的万维网应用程序的主要功能是在线服务分配(OSA),该功能将单个消费者与特定的服务/商品(可能包括贷款或工作以及产品)相匹配,每个服务/商品都有自己的生产者。在感兴趣的应用中,消费者可以自由选择,因此OSA在实践中通常采取个性化推荐或搜索的形式。推荐和搜索系统的性能指标目前倾向于只关注匹配的一方,在某些情况下是消费者(如满意度),在其他情况下是生产者(如利润)。然而,可持续的OSA平台需要对消费者和生产者都有利;否则,被忽视的一方最终可能会停止使用它。在本文中,我们展示了如何将经济学家的总剩余最大化(消费者净利益和生产者利润的总和)的传统思想适应于网络服务分配的异构世界,以促进网络生态系统中社会利益的网络智能。对传统个性化推荐算法的改进使我们能够将总剩余最大化(TSM)应用于三种非常不同类型的现实世界任务——电子商务、P2P借贷和自由职业。这三个任务的结果表明,TSM与目前流行的方法相比非常有利,这对生产者和消费者都有利。
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