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JOURNALS // Avtomatika i Telemekhanika // Archive

Avtomat. i Telemekh., 2022 Issue 10, Pages 47–59 (Mi at16050)

Topical issue

Analysis of the properties of probabilistic models in expert-augmented learning problems

A. I. Bazarovaa, A. V. Grabovoya, V. V. Strijovb

a Moscow Institute of Physics and Technology, Dolgoprudnyi, Moscow oblast, 141701 Russia
b Dorodnicyn Computing Centre, Russian Academy of Sciences, Moscow, 119333 Russia

Abstract: The paper deals with the construction of interpretable machine learning models. The approximation problem is solved for a set of shapes on a contour image. Assumptions that the shapes are second-order curves are introduced. When approximating the shapes, information about the type, location, and shape of curves as well as about the set of their possible transformations is used. Such information is called expert information, and the machine learning method based on expert information is called expert-augmented learning. It is assumed that the set of shapes is approximated by the set of local models. Each local model based on expert information approximates one shape on the contour image. To construct the models, it is proposed to map second-order curves into a feature space in which each local model is linear. Thus, second-order curves are approximated by a set of linear models. In a computational experiment, the problem of approximating an iris on a contour image is considered.

Keywords: mixture of experts, expert-augmented learning, linear model, interpretable model.

Presented by the member of Editorial Board: A. A. Lazarev

Received: 31.01.2022
Revised: 25.06.2022
Accepted: 29.06.2022

DOI: 10.31857/S0005231022100051


 English version:
Automation and Remote Control, 2022, 83:10, 1527–1537

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© Steklov Math. Inst. of RAS, 2024