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Rough set approach for attribute reduction and rule generation: A case of patients with suspected breast cancer

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  • Aboul‐Ella Hassanien

Abstract

Rough set theory is a relatively new intelligent technique used in the discovery of data dependencies; it evaluates the importance of attributes, discovers the patterns of data, reduces all redundant objects and attributes, and seeks the minimum subset of attributes. Moreover, it is being used for the extraction of rules from databases. In this paper, we present a rough set approach to attribute reduction and generation of classification rules from a set of medical datasets. For this purpose, we first introduce a rough set reduction technique to find all reducts of the data that contain the minimal subset of attributes associated with a class label for classification. To evaluate the validity of the rules based on the approximation quality of the attributes, we introduce a statistical test to evaluate the significance of the rules. Experimental results from applying the rough set approach to the set of data samples are given and evaluated. In addition, the rough set classification accuracy is also compared to the well‐known ID3 classifier algorithm. The study showed that the theory of rough sets is a useful tool for inductive learning and a valuable aid for building expert systems.

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  • Aboul‐Ella Hassanien, 2004. "Rough set approach for attribute reduction and rule generation: A case of patients with suspected breast cancer," Journal of the American Society for Information Science and Technology, Association for Information Science & Technology, vol. 55(11), pages 954-962, September.
  • Handle: RePEc:bla:jamist:v:55:y:2004:i:11:p:954-962
    DOI: 10.1002/asi.20042
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    Cited by:

    1. Tseng, Tzu-Liang (Bill) & Huang, Chun-Che, 2016. "Sustainable service and energy provision based on agile rule induction," International Journal of Production Economics, Elsevier, vol. 181(PB), pages 273-288.

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