Personalized e-commerce recommendations

P. Markellou, Ioanna Mousourouli, S. Sirmakessis, A. Tsakalidis
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引用次数: 14

Abstract

Recommendation systems are special personalization tools that help users to find interesting information and services in complex online shops. Even though today's e-commerce environments have drastically evolved and now incorporate techniques from other domains and application areas such as Web mining, semantics, artificial intelligence, user modeling and profiling, etc. setting up a successful recommendation system is not a trivial or straightforward task. This paper argues that by monitoring, analyzing and understanding the behavior of customers, their demographics, opinions, preferences and history, as well as taking into consideration the specific e-shop ontology and by applying Web mining techniques, the effectiveness of produced recommendations can be significantly improved. In this way, the e-shop may upgrade users' interaction, increase its usability, convert users to buyers, retain current customers and establish long-term and loyal one-to-one relationships
个性化电子商务推荐
推荐系统是一种特殊的个性化工具,可以帮助用户在复杂的在线商店中找到有趣的信息和服务。尽管今天的电子商务环境已经发生了巨大的变化,并且现在已经纳入了其他领域和应用领域的技术,如网络挖掘、语义、人工智能、用户建模和分析等,但建立一个成功的推荐系统并不是一项微不足道或直截了当的任务。本文认为,通过监测、分析和理解顾客的行为、人口统计、意见、偏好和历史,并考虑到特定的电子商店本体,通过应用Web挖掘技术,可以显著提高所产生的推荐的有效性。通过这种方式,网店可以提升用户的交互性,增加可用性,将用户转化为买家,留住现有客户,建立长期忠诚的一对一关系
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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