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Identifying Price Sensitive Customers in E-commerce Platforms for Recommender Systems

机译:在推荐系统的电子商务平台中识别价格敏感的客户

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With the rise of E-commerce platforms, more people are getting used to make their daily purchases in online stores, especially for price-discounted goods. Therefore, online price cutting campaigns become a common approach for online retailers to compete with other competitors. Still, giving the same price discount to all may not be an efficient resource allocation as different users respond differently due to the differences of their price sensitivities. So if we are able to identify price sensitive users, both sellers and recommender systems will be greatly benefited from it in terms of improved user targeting and item suggestions. However, due to lack of detailed historical price and customer profile data, it is challenging to conduct price sensitivity analysis via traditional economics approach. More importantly, it is really hard and costly for companies to acquire price sensitivity labeled data. To overcome the constraints, making use of rich meta data (e.g. comment reviews) and time stamp becomes an alternative way. Inspired by distinct expressive power of graphical model, especially bipartite graph, we propose a User Behaviour Probability Transition Model (UBPT) which considers both user and item price sensitivities as weightings in the probability transition process. First, we define our own set of price sensitive users according to anonymous user after-purchase reviews. Second, we integrate selected behavioral features via doing user and item encoding. Third, using both user and item similarities, we combine our algorithm to simulate the probability transition process. With the data set from JD.com, our proposed model significantly outperforms other baselines in most cases. Besides, through applying the idea of UBPT to recommender systems, we can also enhance the performance of traditional recommendation algorithms.
机译:随着电子商务平台的兴起,越来越多的人习惯于在网上商店进行日常购买,尤其是对于打折的商品。因此,在线降价运动已成为在线零售商与其他竞争对手竞争的一种通用方法。但是,由于所有人的价格敏感性不同,不同的用户做出不同的响应,因此对所有人提供相同的价格折扣可能并不是一种有效的资源分配。因此,如果我们能够确定对价格敏感的用户,那么从改进的用户定位和商品建议方面,卖方和推荐者系统都将从中受益匪浅。然而,由于缺乏详细的历史价格和客户资料数据,通过传统的经济学方法进行价格敏感性分析具有挑战性。更重要的是,对于公司而言,获取带有价格敏感性标签的​​数据确实非常困难且成本很高。为了克服这些限制,利用丰富的元数据(例如评论评论)和时间戳成为一种替代方法。受图形模型(尤其是二部图)独特表达能力的启发,我们提出了一种用户行为概率转换模型(UBPT),该模型将用户和商品价格敏感度都视为概率转换过程中的权重。首先,我们根据匿名用户售后评论定义自己的价格敏感用户集。其次,我们通过对用户和项目进行编码来整合选定的行为特征。第三,利用用户和项目的相似性,我们结合了算法来模拟概率转移过程。借助来自JD.com的数据集,我们提出的模型在大多数情况下明显优于其他基准。此外,通过将UBPT的思想应用到推荐系统中,我们还可以提高传统推荐算法的性能。

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