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Machine Learning and Artificial Intelligence in the Works of V.A. Yakubovich

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Abstract

This note precedes the republication of the article “Machine-Learning Pattern Recognition” by V.A. Yakubovich, which was first published by Leningrad University Press in the collection Methods of Computation in 1963.

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Correspondence to A. L. Fradkov.

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To cite this work: Fradkov A.L., “Machine Learning and Artificial Intelligence in the Works of V. A. Yakubovich.”Vestnik of St. Petersburg University. Mathematics. Mechanics. Astronomy, 2021, vol. 8(66), no. 4, рр. 620–624. (In Russian.) https://doi.org/10.21638/spbu01.2021.407.

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Translated by O. Pismenov

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Fradkov, A.L. Machine Learning and Artificial Intelligence in the Works of V.A. Yakubovich. Vestnik St.Petersb. Univ.Math. 54, 381–383 (2021). https://doi.org/10.1134/S1063454121040075

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