Valued Tolerance and Decision Rules

The concept of valuedtolerance is introducedas an extension of the usual concept of indiscernibility (which is a crisp equivalence relation) in rough sets theory. Some specific properties of the approach are discussed. Further on the problem of inducing rules is addressed. Properties of a "credibility degree" associated to each rule are analysed and its use in classification problems is discussed.

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