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Health news feed: Identifying personally relevant health-related URLs in tweets

机译:健康新闻提要:在推文中标识与个人相关的健康相关URL

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摘要

A common use of micro-blogging systems, such as Twitter, is to ‘tweet’ or ‘re-tweet’ URLs of the latest news articles. The challenge is that with the large number of such micro-blog posts, it is difficult to find and filter to just the most relevant news for an individual. In this paper, we propose and detail the health news feed system which utilises a three-stage filtering and categorisation process with three types of knowledge resources using natural language processing (NLP) technologies for filtering and extracting personally-relevant health-related news articles referred to in tweets. The three stages are term-based filtering, content filtering, and categorization.
机译:微博系统(例如Twitter)的常见用法是“推”或“重新推”最新新闻的URL。面临的挑战是,由于微博帖子数量众多,很难找到和过滤出最适合个人的新闻。在本文中,我们提出并详细介绍了健康新闻提要系统,该系统利用自然语言处理(NLP)技术对三种类型的知识资源进行三阶段过滤和分类,以过滤和提取与个人相关的与健康相关的新闻文章在推文中。这三个阶段是基于术语的过滤,内容过滤和分类。

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