A rough-fuzzy document grading system for customized text information retrieval

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摘要

Due to the large repository of documents available on the web, users are usually inundated by a large volume of information, most of which is found to be irrelevant. Since user perspectives vary, a client-side text filtering system that learns the user's perspective can reduce the problem of irrelevant retrieval. In this paper, we have provided the design of a customized text information filtering system which learns user preferences and modifies the initial query to fetch better documents. It uses a rough-fuzzy reasoning scheme. The rough-set based reasoning takes care of natural language nuances, like synonym handling, very elegantly. The fuzzy decider provides qualitative grading to the documents for the user's perusal. We have provided the detailed design of the various modules and some results related to the performance analysis of the system.

论文关键词:Text information retrieval,Rough-set based reasoning,Fuzzy membership,Document relevance computation,User preference learning

论文评审过程:Received 25 April 2003, Accepted 24 September 2003, Available online 7 November 2003.

论文官网地址:https://doi.org/10.1016/j.ipm.2003.09.004