论文标题

电子商务推荐,并提供加权预期公用事业

E-commerce Recommendation with Weighted Expected Utility

论文作者

Xu, Zhichao, Han, Yi, Zhang, Yongfeng, Ai, Qingyao

论文摘要

与在零售商店购物不同,电子商务平台上的消费者通常无法在购买前触摸或尝试产品,这意味着当他们不确定购买产品的结果(例如满意度)时,他们必须做出决策。为了研究人们的偏好,经济学研究人员提出了预期效用(EU)的假设,该假设将与个人选择相关的主题价值建模为对个人对该选择结果的估值的统计期望。尽管它在游戏理论和决策理论的研究中取得了成功,但是在电子商务推荐系统中,欧盟的有效性大多是未知的。关于电子商务建议的先前研究可以解释购买决策的效用,无论是产品的消费量还是货币意义上的卖方/买家的获利。由于大多数消费者一次一次购买产品的一个单位,而且大多数替代品的价格相似,因此购买实用程序的建模在实践中可能不准确。在本文中,我们将购买实用程序解释为消费者从产品中获得的满意度水平,并建议使用欧盟为消费者的行为模式建模推荐框架。我们假设消费者估计所有替代方案的预期实用程序,并选择每次购买的最大预期效用的产品。为了应对每个消费者的潜在心理偏见,我们介绍了概率权重功能(PWF)的用法,并根据加权预期效用(WEU)设计算法。对现实世界电子商务数据集的实证研究表明,我们提出的基于排名的建议框架在TOP-K建议中对经典的协作过滤/潜在因素模型和最先进的深层模型都具有统计学上的显着改善。

Different from shopping at retail stores, consumers on e-commerce platforms usually cannot touch or try products before purchasing, which means that they have to make decisions when they are uncertain about the outcome (e.g., satisfaction level) of purchasing a product. To study people's preferences, economics researchers have proposed the hypothesis of Expected Utility (EU) that models the subject value associated with an individual's choice as the statistical expectations of that individual's valuations of the outcomes of this choice. Despite its success in studies of game theory and decision theory, the effectiveness of EU, however, is mostly unknown in e-commerce recommendation systems. Previous research on e-commerce recommendation interprets the utility of purchase decisions either as a function of the consumed quantity of the product or as the gain of sellers/buyers in the monetary sense. As most consumers just purchase one unit of a product at a time and most alternatives have similar prices, such modeling of purchase utility is likely to be inaccurate in practice. In this paper, we interpret purchase utility as the satisfaction level a consumer gets from a product and propose a recommendation framework using EU to model consumers' behavioral patterns. We assume that consumer estimates the expected utilities of all the alternatives and choose products with maximum expected utility for each purchase. To deal with the potential psychological biases of each consumer, we introduce the usage of Probability Weight Function (PWF) and design our algorithm based on Weighted Expected Utility (WEU). Empirical study on real-world e-commerce datasets shows that our proposed ranking-based recommendation framework achieves statistically significant improvement against both classical Collaborative Filtering/Latent Factor Models and state-of-the-art deep models in top-K recommendation.

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