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Intelligent modeling systems: Design principles

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Abstract

This paper covers the design problems for intelligent modeling systems. Notably, we study the issues of special mathematical software development, model choice and uncertainty consideration for the initial information.

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Original Russian Text © S.L. Podval’ny, T.M. Ledeneva, 2013, published in Sistemy Upravleniya i Informatsionnye Tekhnologii, 2013, No. 1, pp. 4–10.

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Podval’ny, S.L., Ledeneva, T.M. Intelligent modeling systems: Design principles. Autom Remote Control 74, 1201–1210 (2013). https://doi.org/10.1134/S0005117913070114

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