安全的电子商务网站推荐系统

B. Ramesh, R. Reeba
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引用次数: 8

摘要

推荐可以基于用户兴趣、人际影响和人际兴趣相似度。所涉及的社会因素有助于以更个性化的方式向用户推荐产品。社交圈包括与用户有相似兴趣的用户。电子商务网站为用户提供产品推荐,以提高产品的销售。推荐是一个信息过滤过程。由于大量数据以极快的速度积累,在数据挖掘中需要提取所需的基本数据。对推荐系统的攻击可以是推送攻击或核攻击。这些攻击会导致虚假推荐,从而影响客户满意度。将假配置文件与正品配置文件进行分类,有助于提高产品推荐的效率。这就避免了电子商务网站在产品推荐上的操纵。在冷启动情况下,可用于推荐的数据不足,则包含location属性进行推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure recommendation system for E-commerce website
The recommendation can be done based on user interest, interpersonal influence, and interpersonal interest similarity. The social factors involved helps to recommend the product to the user in the more personalized way. The social circle includes users having similar interest to the user. E-commerce sites are providing product recommendation to the users to improve the sale of products. The recommendation is an information filtering process. Due to the accumulation of a large amount of data in a huge rate the extraction of the essential data needed is being done in data mining. Attacks on recommendation systems can be push attack or nuke attacks. The attacks can give rise to the fake recommendation which can affect the customer satisfaction. The classification of fake profiles from genuine profiles helps to improve the efficiency in the recommendation of products. This avoids the manipulation in the recommendation of products in an e-commerce website. In cold start situation where the data available for recommendation is not enough, the location attribute is included to make the recommendation.
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