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Multi-topic Information Filtering with a Single User Profile

机译:使用单个用户配置文件进行多主题信息过滤

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In Information Filtering (IF) a user may be interested in several topics in parallel. But IF systems have been built on representational models derived from Information Retrieval and Text Categorization, which assume independence between terms. The linearity of these models results in user profiles that can only represent one topic of interest. We present a methodology that takes into account term dependencies to construct a single profile representation for multiple topics, in the form of a hierarchical term network. We also introduce a series of non-linear functions for evaluating documents against the profile. Initial experiments produced positive results.
机译:在信息过滤(if)中,用户可能对多个主题并行感兴趣。但是,如果系统已经建立在来自信息检索和文本分类的代表性模型上,但是假设术语之间的独立性。这些模型的线性度导致用户配置文件,只能代表一个感兴趣的主题。我们介绍了一种方法,该方法考虑了阶段依赖性,以构造多个主题的单个简档表示,以分层术语网络的形式。我们还介绍了一系列非线性功能,用于评估文件的文件。初始实验产生了阳性结果。

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