基于用户的电子商务多智能体个性化推荐系统

Nagagopiraju Vullam, S. Vellela, Venkateswara Reddy B, M. V. Rao, K. Sk, Roja D
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引用次数: 2

摘要

随着越来越多的行业开始响应移动互联网使用的大趋势,从传统的商业模式转向电子商务,电子商务的规模迅速增长。推荐系统有三种类型:混合型、协作型和基于内容的。基于内容的系统考虑了推荐对象的特征。然后,使用基于内容的推荐方法选择数据库中被分类为“浪漫”的标题。协同过滤系统利用相似性度量来推荐具有相似兴趣的个人或对象共享的项目。根据用户的偏好向用户推荐项目。在推荐系统中,协同过滤是最常用、最有效的推荐过程。但是,随着电子商务系统中的用户和产品数量的增加,在整个用户空间中定位目标用户最近的邻居所需的时间也会增加,从而对系统性能产生影响。利用Multi-Agent对电子商务个性化推荐系统中的用户聚类,对电子商务个性化推荐系统中应用和设计的Multi-Agent进行分析。本文给出了一种基于用户聚类的推荐实现策略。根据用户对商品类别的得分,对用户进行聚类,只对其类别中最近的邻居进行搜索,从而尽可能多地搜索到最近的邻居。该分析的准确性、召回率和特异性用于计算其性能。在这种分析中,所提出的方法会得到较好的结果。
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Multi-Agent Personalized Recommendation System in E-Commerce based on User
As more sectors began to switch from conventional business models to e-commerce in response to the general trend toward mobile Internet use, the scale of e-commerce grew rapidly. There are three types of recommendation systems: hybrid, collaborative, content-based. Content based systems take into consideration the characteristics of the recommended objects. Then, titles in the database that have been classified as “romantic” are selected using a content-based recommendation method. Collaborative filtering systems utilize similarity measures to recommend items that are shared by individuals or objects with similar interests. Users are recommended items based on their preferences. In the recommendation system, collaborative filtering is the most popular and effective suggestion process. However, system performance impact as the amount of time required to locate the target user's closest neighbor across the entire user space increases with the number of users and products in the e-commerce system. The applied and designed Multi-Agent personalized recommendation system in E-commerce can be analyzed using user clustering in the Multi-Agent to E-commerce personalized recommendation system. An implementation strategy for recommendations based on user clustering is shown in this analysis. According to their scores for commodity categories, users are clustered, and only the nearest neighbours in their categories are searched, so that as many nearest neighbors as possible can be searched. The accuracy, recall, and specificity of this analysis are used to calculate its performance. In this analysis the presented method will give better results.
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