Personalized pricing recommender system: multi-stage epsilon-greedy approach

HetRec '11 Pub Date : 2011-10-27 DOI:10.1145/2039320.2039329
Toshihiro Kamishima, S. Akaho
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引用次数: 24

Abstract

Many e-commerce sites use recommender systems, which suggest items that customers prefer. Though recommender systems have achieved great success, their potential is not yet fulfilled. One weakness of current systems is that the actions of the system toward customers are restricted to simply showing items. We propose a system that relaxes this restriction to offer price discounting as well as recommendations. The system can determine whether or not to offer price discounting for individual customers, and such a pricing scheme is called price personalization. We discuss how the introduction of price personalization improves the commercial viability of managing a recommender system, and thereby improving the customers' sense of the system's reliability. We then propose a method for adding price personalization to standard recommendation algorithms which utilize two types of customer data: preferential data and purchasing history. Based on the analysis of the experimental results, we reveal further issues in designing a personalized pricing recommender system.
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个性化定价推荐系统:多阶段epsilon-greedy方法
许多电子商务网站使用推荐系统,推荐顾客喜欢的商品。虽然推荐系统取得了巨大的成功,但其潜力尚未得到充分发挥。当前系统的一个弱点是,系统对顾客的行为仅限于简单地显示商品。我们建议建立一个系统,放宽这一限制,提供价格折扣和推荐。系统可以决定是否为个别客户提供价格折扣,这种定价方案称为价格个性化。我们讨论了价格个性化的引入如何提高管理推荐系统的商业可行性,从而提高客户对系统可靠性的感觉。然后,我们提出了一种将价格个性化添加到标准推荐算法的方法,该算法利用两种类型的客户数据:优惠数据和购买历史。在对实验结果进行分析的基础上,提出了个性化定价推荐系统设计中需要进一步研究的问题。
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