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Sampling aspects of rough set theory

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Abstract.

Rough Set Theory (RST) originated as an approach to approximating a given set, but has found its main applications in the statistical domain of classification problems. It generates classification rules, and can be seen in general terms as a technique for rule induction. Expositions of RST often stress that it is robust in requiring no (explicit) assumptions of a statistical nature. The argument here, however, is that this apparent strength is also a weakness which prevents establishment of general statistical properties and comparison with other methods. A sampling theory is developed for the first time, using both the original RST model and its probabilistic extension, Variable Precision Rough Sets. This is applied in the context of examples, one of which involves Fisher’s Iris data.

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Correspondence to Bruce Curry.

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Bruce Curry: The author is grateful to two anonymous referees for various helpful suggestions

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Curry, B. Sampling aspects of rough set theory. Computational Management Science 1, 151–178 (2004). https://doi.org/10.1007/s10287-003-0007-0

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  • DOI: https://doi.org/10.1007/s10287-003-0007-0

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