基于社会网络分析的情境感知和用户行为推荐系统

Mina Razghandi, Seyed Alireza Hashemi Golpaygani
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引用次数: 12

摘要

当涉及到今天复杂的电子商务网站时,经典的协同过滤方法缺乏准确性。推荐系统可以通过单独考虑每个用户的行为模型和与其他人的群体行为模型(可以解释为他们的社会关系)来提高效率和效果。本文提出了一种新的基于情境感知和行为的推荐系统,该系统利用社会网络分析来提高推荐效果。总体思路是基于用户过去与系统的交互,提取不同环境下的用户行为模式,以便进一步分类。在本研究中,我们使用了社会网络分析的思想,并进行了改进;我们考虑用户之间的多重关系,并使用多层社交网络使我们的偏好组更加丰富。不同的社交网络指标,如集中化、模块化等级等,可以帮助我们在社交网络中找到相似的用户群体。我们结合所有的结果,并根据用户最近邻居的意见向用户推荐top-K的商品。评估结果显示,与以前的技术相比,建议的方法的准确性有显着提高。
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A Context-Aware and User Behavior-Based Recommender System with Regarding Social Network Analysis
Classic collaborative filtering methods suffer from lack of accuracy when it comes to todays complicated ecommerce websites. Recommender systems can be more efficient and effective by considering each user behavior model individually and in groups with other people that can be interpreted as their social relations. This paper presents a new context aware and behavior-based recommender system which utilizes social network analysis to enhance recommending results. The general idea is extracting user behavior patterns in different context based on user's past interactions with the system for further classifications. In this study we use the idea of using social network analysis with an improvement; we consider multiple relations among users and use a multi-layer social network to make our groups of preferences richer. Different social network metrics such as centralization, modularity class and so on can help us find similar groups of users in social network. We combine all the results and suggest top-K items to the user based on his/her nearest neighbor opinions. Evaluating the results shown significant improvement in accuracy of recommendations for proposed approach in contrast to previous techniques.
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