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首页> 外文期刊>ACM Transactions on Internet Technology >An Online Blog Reading System by Topic Clustering and Personalized Ranking
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An Online Blog Reading System by Topic Clustering and Personalized Ranking

机译:基于主题聚类和个性化排名的在线博客阅读系统

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摘要

There is an increasing number of people reading, writing, and commenting on blogs. According to a recent survey made by Technorati, there are about 75,000 new blogs and 1.2 million new posts everyday. However, it is difficult and time consuming for a blog reader to find the most interesting posts in the huge and dynamic blog world. In this article, an online Personalized Blog Reader (PBR) system is proposed, which facilitates blog readers in browsing the coolest and newest blog posts of their interests by automatically clustering the most relevant stories. PBR aims to make a user's potential favorite topics always ranked higher than those nonfavorite ones. This is accomplished in the following steps. First, the system collects and provides a unified incremental index of posts coming from different blogs. Then, an incremental clustering algorithm with a flexible half-bounded window of observation is proposed to satisfy the requirements of online processing. It learns people's personalized reading preferences to present a user with a final reading list. The experimental results show that the proposed incremental clustering algorithm is effective and efficient, and the personalization of the PBR performs well.
机译:越来越多的人在博客上阅读,写作和评论。根据Technorati最近进行的一项调查,每天大约有75,000个新博客和120万个新帖子。但是,对于博客读者来说,在庞大而动态的博客世界中找到最有趣的帖子既困难又耗时。在本文中,提出了一种在线个性化博客阅读器(PBR)系统,该系统可以通过自动聚类最相关的故事来帮助博客阅读器浏览他们感兴趣的最新最酷的博客文章。 PBR的目的是使用户潜在的最喜欢的主题始终比那些不喜欢的主题排名更高。这可以通过以下步骤完成。首先,系统收集并提供来自不同博客的帖子的统一增量索引。然后,提出了一种具有灵活的半界观察窗的增量聚类算法,以满足在线处理的需求。它学习人们的个性化阅读偏好,为用户提供最终的阅读列表。实验结果表明,所提出的增量聚类算法是有效且高效的,并且策略路由的个性化效果良好。

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