基于在线学习的新闻推荐系统聚类方法

Minh N. H. Nguyen, Chuan Pham, J. Son, C. Hong
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引用次数: 9

摘要

推荐代理广泛应用于在线市场、社交网络和搜索引擎。最近的在线新闻推荐系统如Google news和Yahoo!News产生实时决策,用于对每天大量新闻和用户访问的重点报道进行排名和显示。向用户推荐的高亮项目越相关,用户的反馈就越有趣、越好。因此,分布式在线学习可以为大规模场景下动态环境下基于侧信息的推荐代理提供学习能力。在这项工作中,我们提出了一种分布式算法,该算法将在线K-Means用户上下文聚类与在线学习机制相结合,用于选择突出显示的新闻。本文提出的具有下界自信聚类的在线聚类算法比贪婪聚类更接近于离线K-Means聚类,并且在学习过程中具有更好的性能。该算法为大规模新闻推荐系统提供了一种可扩展性强、存储和计算成本低的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online learning-based clustering approach for news recommendation systems
Recommender agents are widely used in online markets, social networks and search engines. The recent online news recommendation systems such as Google News and Yahoo! News produce real-time decisions for ranking and displaying highlighted stories from massive news and users access per day. The more relevant highlighted items are suggested to users, the more interesting and better feedback from users achieve. Therefore, the distributed online learning can be a promising approach that provides learning ability for recommender agents based on side information under dynamic environment in large scale scenarios. In this work, we propose a distributed algorithm that is integrated online K-Means user contexts clustering with online learning mechanisms for selecting a highlighted news. Our proposed algorithm for online clustering with lower bound confident clustering approximates closer to offline K-Means clusters than greedy clustering and gives better performance in learning process. The algorithm provides a scalability, cheap storage and computation cost approach for large scale news recommendation systems.
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