An information filtering model on the Web and its application in JobAgent

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摘要

Machine-learning techniques play the important roles for information filtering. The main objective of machine-learning is to obtain users' profiles. To decrease the burden of on-line learning, it is important to seek suitable structures to represent user information needs. This paper proposes a model for information filtering on the Web. The user information need is described into two levels in this model: profiles on category level, and Boolean queries on document level. To efficiently estimate the relevance between the user information need and documents, the user information need is treated as a rough set on the space of documents. The rough set decision theory is used to classify the new documents according to the user information need. In return for this, the new documents are divided into three parts: positive region, boundary region, and negative region. An experimental system JobAgent is also presented to verify this model, and it shows that the rough set based model can provide an efficient approach to solve the information overload problem.

论文关键词:Information filtering,Rough set,Intelligent information agent

论文评审过程:Received 11 July 2000, Accepted 31 July 2000, Available online 28 November 2000.

论文官网地址:https://doi.org/10.1016/S0950-7051(00)00088-5