E-commerce Product Recommendation by Personalized Promotion and Total Surplus Maximization

Qi Zhao
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引用次数: 6

Abstract

Existing recommendation algorithms treat recommendation problem as rating prediction and the recommendation quality is measured by RMSE or other similar metrics. However, we argued that when it comes to E-commerce product recommendation, recommendation is more than rating prediction by realizing the fact price plays a critical role in recommendation result. In this work, we propose to build E-commerce product recommender systems based on fundamental economic notions. We first proposed an incentive compatible method that can effectively elicit consumer's willingness-to-pay in a typical E-commerce setting and in a further step, we formalize the recommendation problem as maximizing total surplus. We validated the proposed WTP elicitation algorithm through crowd sourcing and the results demonstrated that the proposed approach can achieve higher seller profit by personalizing promotion. We also proposed a total surplus maximization (TSM) based recommendation framework. We specified TSM by three of the most representative settings - e-commerce where the product quantity can be viewed as infinity, P2P lending where the resource is bounded and freelancer marketing where the resource (job) can be assigned to one freelancer. The experimental results of the corresponding datasets shows that TSM exceeds existing approach in terms of total surplus.
个性化促销与总剩余最大化的电子商务产品推荐
现有的推荐算法将推荐问题视为评级预测,并通过RMSE或其他类似的指标来衡量推荐质量。然而,我们意识到价格在推荐结果中起着至关重要的作用,认为在电子商务产品推荐中,推荐不仅仅是评级预测。在这项工作中,我们提出基于基本的经济学概念构建电子商务产品推荐系统。我们首先提出了一种激励相容的方法,该方法可以有效地在典型的电子商务环境中诱导消费者的支付意愿,并进一步将推荐问题形式化为最大化总剩余。我们通过众包验证了所提出的WTP启发算法,结果表明所提出的方法可以通过个性化促销获得更高的卖家利润。我们还提出了一个基于总剩余最大化(TSM)的推荐框架。我们通过三种最具代表性的设置来指定TSM——电子商务,其中产品数量可以被视为无限,P2P借贷,其中资源是有限的,自由职业者营销,其中资源(工作)可以分配给一个自由职业者。相应数据集的实验结果表明,TSM在总盈余方面优于现有方法。
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