基于聚类的社会协同过滤方法

Nassira Chekkai, Mohammed Amin Tahraoui, Mohamed Ait Hamadouche, S. Chikhi, H. Kheddouci, S. Meshoul, Amira Bouaziz
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引用次数: 0

摘要

目前,协同过滤(CF)技术已成为推荐系统中应用广泛的一种技术。它的目的是根据用户之间的社会关系,推荐与用户的品味和偏好相关的物品。CF中的一个关键问题是冷启动推荐,它包括两个关键方面:新用户和新项目。Cold user是新进入系统的用户,无法获得相关物品,Cold item是新进入系统的物品,目前还没有评级,无法进行推荐。在本文中,我们提出了“CSCF”一种基于图的社会协同过滤方法。CSCF提供了许多旨在提高用户满意度的交互式任务,并通过识别最有效的集群委托来解决冷启动挑战。计算结果验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CSCF: Clustering based-approach for social collaborative filtering
Nowadays, Collaborative Filtering (CF) has become a widely used technique in the field of recommender systems. It aims to recommend items that are relevant to the tastes and preferences of the users based on the social relationships between them. One crucial issue in CF is the Cold Start Recommendation which includes two key aspects: new user and new item. Cold user is a new comer who enters the system and cannot get relevant items, while cold item is a new item that cannot be recommended since it has no ratings yet. In this paper, we present “CSCF” a graph-based approach for social collaborative filtering. CSCF offers many interactive tasks aiming to improve the user satisfaction and solves the cold start challenges by identifying the most effective delegates with clustering. Computational results are demonstrated to confirm the effectiveness of our proposed approach.
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