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Stochastic Programming

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Progress in Mathematics

Part of the book series: Progress in Mathematics ((PM,volume 11))

Abstract

The present article is a general survey of the problems of stochastic programming. It is based on lectures delivered by the author to graduating students of the Cybernetics Section of the Economics Department of Leningrad State University (LGU) in 1967 and 1968.

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Kolbin, V.V. (1971). Stochastic Programming. In: Gamkrelidze, R.V. (eds) Progress in Mathematics. Progress in Mathematics, vol 11. Springer, Boston, MA. https://doi.org/10.1007/978-1-4684-3309-8_1

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