A recommender for targeted advertisement of unsought products in e-commerce

Koung-Lung Lin, Jane Yung-jen Hsu, Han-Shen Huang, Chun-Nan Hsu
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引用次数: 16

Abstract

Recommender systems are a powerful tool for promoting sales in electronic commerce. An effective shopping recommender system can help boost the retailer's sales by reminding customers to purchase additional products originally not on their shopping lists. Existing recommender systems are designed to identify the top selling items, also called hot sellers, based on the store's sales data and customer purchase behaviors. It turns out that timely reminders for unsought products, which are cold sellers that the consumer either does not know about or does not normally think of buying, present great opportunities for significant sales growth. In this paper, we propose the framework and process of a recommender system that identifies potential customers of unsought products using boosting-SVM. The empirical results show that the proposed approach provides a promising solution to targeted advertisement for unsought products in an e-commerce environment.
针对电子商务中未被搜索到的产品进行定向广告推荐
推荐系统是电子商务中促进销售的有力工具。一个有效的购物推荐系统可以通过提醒顾客购买原本不在购物清单上的额外产品来帮助零售商提高销售额。现有的推荐系统旨在根据商店的销售数据和顾客的购买行为来识别最畅销的商品,也被称为热门商品。事实证明,对于那些消费者不知道或通常不会考虑购买的冷销产品,及时提醒是销售大幅增长的绝佳机会。在本文中,我们提出了一个推荐系统的框架和过程,该系统使用boosting-SVM识别未寻找产品的潜在客户。实证结果表明,本文提出的方法为电子商务环境中未搜索产品的定向广告提供了一个有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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