Probabilistic approaches to rough sets 论文

2003Expert Systems引用 336
Rough Sets and Fuzzy LogicData Mining Algorithms and ApplicationsBayesian Modeling and Causal Inference

摘要

Abstract: Probabilistic approaches to rough sets in granulation, approximation and rule induction are reviewed. The Shannon entropy function is used to quantitatively characterize partitions of a universe. Both algebraic and probabilistic rough set approximations are studied. The probabilistic approximations are defined in a decision‐theoretic framework. The problem of rule induction, a major application of rough set theory, is studied in probabilistic and information‐theoretic terms. Two types of rules are analyzed: the local, low order rules, and the global, high order rules.