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Stochastic Approximation Algorithm with Randomization at the Input for Unsupervised Parameters Estimation of Gaussian Mixture Model with Sparse Parameters. / Boiarov, A. A.; Granichin, O. N.

In: Automation and Remote Control, Vol. 80, No. 8, 01.08.2019, p. 1403-1418.

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@article{d2cb5ea97c8347469263bba9090c60d0,
title = "Stochastic Approximation Algorithm with Randomization at the Input for Unsupervised Parameters Estimation of Gaussian Mixture Model with Sparse Parameters",
abstract = "We consider the possibilities of using stochastic approximation algorithms with randomization on the input under unknown but bounded interference in studying the clustering of data generated by a mixture of Gaussian distributions. The proposed algorithm, which is robust to external disturbances, allows us to process the data {"}on the fly{"} and has a high convergence rate. The operation of the algorithm is illustrated by examples of its use for clustering in various difficult conditions.",
keywords = "clustering, Gaussian mixture model, randomization, stochastic approximation, unsupervised learning",
author = "Boiarov, {A. A.} and Granichin, {O. N.}",
year = "2019",
month = aug,
day = "1",
doi = "10.1134/S0005117919080034",
language = "Английский",
volume = "80",
pages = "1403--1418",
journal = "Automation and Remote Control",
issn = "0005-1179",
publisher = "МАИК {"}Наука/Интерпериодика{"}",
number = "8",

}

RIS

TY - JOUR

T1 - Stochastic Approximation Algorithm with Randomization at the Input for Unsupervised Parameters Estimation of Gaussian Mixture Model with Sparse Parameters

AU - Boiarov, A. A.

AU - Granichin, O. N.

PY - 2019/8/1

Y1 - 2019/8/1

N2 - We consider the possibilities of using stochastic approximation algorithms with randomization on the input under unknown but bounded interference in studying the clustering of data generated by a mixture of Gaussian distributions. The proposed algorithm, which is robust to external disturbances, allows us to process the data "on the fly" and has a high convergence rate. The operation of the algorithm is illustrated by examples of its use for clustering in various difficult conditions.

AB - We consider the possibilities of using stochastic approximation algorithms with randomization on the input under unknown but bounded interference in studying the clustering of data generated by a mixture of Gaussian distributions. The proposed algorithm, which is robust to external disturbances, allows us to process the data "on the fly" and has a high convergence rate. The operation of the algorithm is illustrated by examples of its use for clustering in various difficult conditions.

KW - clustering

KW - Gaussian mixture model

KW - randomization

KW - stochastic approximation

KW - unsupervised learning

UR - http://www.scopus.com/inward/record.url?scp=85070750657&partnerID=8YFLogxK

UR - http://www.mendeley.com/research/stochastic-approximation-algorithm-randomization-input-unsupervised-parameters-estimation-gaussian-m

U2 - 10.1134/S0005117919080034

DO - 10.1134/S0005117919080034

M3 - статья

AN - SCOPUS:85070750657

VL - 80

SP - 1403

EP - 1418

JO - Automation and Remote Control

JF - Automation and Remote Control

SN - 0005-1179

IS - 8

ER -

ID: 46020243