SCOL: similarity and credibility-based approach for opinion leaders detection in collaborative filtering-based recommender systems

Nassira Chekkai, I. Chorfi, S. Meshoul, Badreddine Chekkai, D. Schwab, Mohamed Belaoued, Amel Ziani
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引用次数: 1

Abstract

Recommender systems (RSs) have recently gained significant attention from both research and industrial communities. These systems generate the recommendations of items in one of two ways, namely collaborative or content-based filtering. Collaborative filtering is a technique used by recommender systems in order to suggest to the user a set of items based on the opinions of other users who share with him the same preferences. One of the key issues in collaborative filtering systems (CFSs) is how to generate adequate recommendations for newcomers who rate only a small number of items, a problem known as cold start user. Another interesting problem is the cold start item when a new item is introduced in the system and cannot be recommended. In this paper, we present a clustering-based approach SCOL that aims to alleviate the cold start challenges; by identifying the most effective opinion leaders among the social network of the CFS. SCOL clustering focuses on the credibility and correlation similarity concepts.
基于相似度和可信度的协同过滤推荐系统意见领袖检测方法
推荐系统(RSs)最近受到了研究和工业界的极大关注。这些系统以两种方式之一生成项目推荐,即协作过滤或基于内容的过滤。协同过滤是推荐系统使用的一种技术,目的是根据与用户有相同偏好的其他用户的意见向用户推荐一组项目。协同过滤系统(CFSs)的关键问题之一是如何为只对少量项目进行评分的新手生成足够的推荐,这个问题被称为冷启动用户。另一个有趣的问题是当一个新项目被引入系统并且不能被推荐时的冷启动项目。在本文中,我们提出了一种基于聚类的方法SCOL,旨在缓解冷启动的挑战;在粮安委的社会网络中找出最有效的意见领袖。SCOL聚类主要关注可信性和相关性相似性概念。
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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