On the choice of basic regression functions and machine learning

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St Petersburg State University

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As is known, the regression analysis task is widely used in machine learning problems, which allows to establish relationship between observed data and compactly store of information. Most often, a regression function is described by a linear combination of some of the selected functions fj (X), j = 1, . . . ,m, X 2 D ⊂ Rs. If the observed data contains a random error, then the regression function restored from the observed data contains a random error and a systematic error depending on the selected functions fj . The article indicates the possibility of optimal selection of functions fj in the sense of a given functional metric, if it is known that the true dependence is consistent with some functional equation. In some cases (regular grids, s ≤ 2), similar results can be obtained using the random process analysis method. The numerical examples given in this article illustrate much more opportunities for the task of constructing the regression function.

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Ermakov S.M., Leora S.N. On the choice of basic regression functions and machine learning. Vestnik of Saint Petersburg University. Mathematics. Mechanics. Astronomy, 2022, vol. 9 (67), issue 1, pp. 11–22.

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