A Rough Set Approach for the Discovery of Classification Rules in Interval-Valued Information Systems
A novel rough set approach is proposed in this paper to discover classification rules through a process of knowledge induction which selects decision rules with a minimal set of features for classification of real-valued data. A rough set knowledge discovery framework is formulated for the analysis of interval-valued information systems converted from real-valued raw decision tables. The minimal feature selection method for information systems with interval-valued features obtains all classification rules hidden in a system through a knowledge induction process. Numerical examples are employed to substantiate the conceptual arguments
Year of publication: |
2017
|
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Authors: | Leung, Yee |
Other Persons: | Fischer, Manfred M. (contributor) ; Wu, Wei-Zhi (contributor) ; Mi, Ju-Sheng (contributor) |
Publisher: |
[2017]: [S.l.] : SSRN |
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freely available
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