协同过滤技术综述

Xiaoyuan Su, T. Khoshgoftaar
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引用次数: 3607

摘要

协同过滤(CF)是构建推荐系统最成功的方法之一,它利用一组用户的已知偏好为其他用户提供推荐或预测未知偏好。本文首先介绍了CF任务及其面临的主要挑战,如数据稀疏性、可扩展性、同义词、灰羊、先令攻击、隐私保护等,以及可能的解决方案。然后,我们介绍了CF技术的三个主要类别:基于内存的、基于模型的和混合CF算法(将CF与其他推荐技术结合起来),并提供了每个类别的代表性算法的示例,并分析了它们的预测性能和解决挑战的能力。从基本技术到最先进的技术,我们试图对CF技术进行全面的调查,这可以作为该领域研究和实践的路线图。
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A Survey of Collaborative Filtering Techniques
As one of the most successful approaches to building recommender systems, collaborative filtering (CF) uses the known preferences of a group of users to make recommendations or predictions of the unknown preferences for other users. In this paper, we first introduce CF tasks and their main challenges, such as data sparsity, scalability, synonymy, gray sheep, shilling attacks, privacy protection, etc., and their possible solutions. We then present three main categories of CF techniques: memory-based, modelbased, and hybrid CF algorithms (that combine CF with other recommendation techniques), with examples for representative algorithms of each category, and analysis of their predictive performance and their ability to address the challenges. From basic techniques to the state-of-the-art, we attempt to present a comprehensive survey for CF techniques, which can be served as a roadmap for research and practice in this area.
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