AI AND INTELLIGENT INDUSTRIAL APPLICATIONS: THE ROUGH SET PERSPECTIVE

Application of intelligent methods in industry become a very challenging issue nowadays and will be of extreme importance in the future. Intelligent methods include fuzzy sets, neural networks, genetics algorithms, and other techniques known as soft computing. No doubt, rough set theory can also contribute essentially to this domain. In this paper, basic ideas of rough set theory are presented and some possible intelligent industrial applications outlined.

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