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Organization of computer experiments on inductive knowledge discovery

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Abstract

This paper reviews tests of the features of methods of inductive knowledge discovery, it proposes a general approach to their performance and a scheme of experimental exploration, as well as giving examples of the use of a general approach for studying the features of methods during tasks of pattern recognition and medical diagnostics.

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Original Russian Text © A.S. Kleshchev, S.V. Smagin, 2008, published in Nauchno-Tekhnicheskaya Informatsiya, Seriya 2, 2008, No. 1, pp. 16–24.

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Kleshchev, A.S., Smagin, S.V. Organization of computer experiments on inductive knowledge discovery. Autom. Doc. Math. Linguist. 42, 17–26 (2008). https://doi.org/10.3103/S0005105508010032

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  • DOI: https://doi.org/10.3103/S0005105508010032

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