Learning in Uncertain Environments

作者: Marco Botta , Attilio Giordana , Lorenza Saitta

DOI: 10.1007/978-1-4615-3640-6_14

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摘要: In this paper we briefly survey the problems arising in learning concept descriptions from examples domains affected by uncertainty and vagueness. A programming environment, called SMART-SHELL, is also presented: it addresses these problems, exploiting fuzzy logic. This achieved supplying system with capability of handling a relational database, containing extensional representation acquired logic formulas.

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