利用交易数据推荐冷启动和长尾的电子商务产品

Anand Kumar Pandey, B. Ankayarkanni
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引用次数: 4

摘要

推荐方法在从近乎无限的库存中发现和展示有趣的商品给潜在用户方面起着至关重要的作用。然而,推荐系统正面临两个问题的挑战。一个是“如何吸引新用户”,另一个是“如何给用户带来惊喜”。这个问题被称为冷启动建议。本文讨论了电子商务零售商在产品快售罄、产品长时间滞销的情况下如何处理产品。为了克服这一问题,通过使用聚类和分类算法,跟踪基于之前购买的同类客户的产品销售情况。向用户推荐组合产品,并根据用户的兴趣点和产品交易细节进行综合推荐。通过这种方式,零售商可以获得一些长期不出售的利润。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommending E-Commerce Products on Cold Start and Long Tail Using Transaction Data
Recommender method plays a critical role in the discovery and display of interesting items from near-infinite inventories to potential users. Yet the recommender systems are being challenged by two problems. One is “how to address new users” and the other one is “how to amaze users”. The problem is known as a cold-start recommendation. In this paper, how the products are handled in the e-commerce retailers getting sold out soon, and products remain stagnant for a long duration isdiscussed. To overcome this problem, the selling of products to customers of the same kind based is tracked on the previous purchase by using clustering and classification algorithms. To recommend combo products to users and general recommendation based on user point of interest and product transaction details. This way the retailers are getting helped to gain some profit which is not sold for a long period.
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