Разработка алгоритма многоклассового классификатора системы федеративного обучения, функционирующей в условиях неполноты классов локальных классификаторов
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Development of a multi-class classifier algorithm for a federated learning system operating in case of incomplete classes of local classifiers

Mikhalev P.A.,  Kutsakin M.A.,  Karamyhova O.V. 

UDC 004.852
DOI: 10.26102/2310-6018/2024.47.4.023

  • Abstract
  • List of references
  • About authors

The relevance of research is due the need to solve the problem of training multi-class classifier models used in federated machine learning system structure operating with a training data set that contains both publicly available data and confidential data that forming hidden classes. A similar problem arises in the context of training a classifier using a training data set, some of which consists of personal information or data of varying degrees of confidentiality. In this regard, this article is aimed at researching the features of the Gaussian mixture model of distributions as a way of representing hidden classes representing confidential data, as well as justifying the choice of an algorithmic method for finding maximum likelihood estimates of its parameters. The main method for solving the problem of identifying the parameters of hidden classes is a reasonably chosen two-stage iterative expectation-maximization procedure (EM-algorithm), which ensures strengthening the relationship between missing (confidential) data and unknown parameters of the data model represented by a Gaussian mixture of distributions. The article presents a diagram of the developed algorithm of a multi-class classifier for federated machine learning system, represented by parallel cycles of forming local learning models and their ensemble into a global learning model.

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Mikhalev Pavel Andreevich

Russian Federation Security Guard Service Federal Academy

Oryol, Russia

Kutsakin Maksim Alekseevich
Candidate of Technical Sciences

eLibrary |

Russian Federation Security Guard Service Federal Academy

Oryol, Russia

Karamyhova Oksana Viktorovna
Candidate of Pedagogical Sciences

Russian Federation Security Guard Service Federal Academy

Oryol, Russia

Keywords: federated machine learning, multi-class classification, confidential training data, gaussian mixture model of distributions, EM-algorithm

For citation: Mikhalev P.A., Kutsakin M.A., Karamyhova O.V. Development of a multi-class classifier algorithm for a federated learning system operating in case of incomplete classes of local classifiers. Modeling, Optimization and Information Technology. 2024;12(4). URL: https://moitvivt.ru/ru/journal/pdf?id=1731 DOI: 10.26102/2310-6018/2024.47.4.023 .

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Full text in PDF

Received 30.10.2024

Revised 18.11.2024

Accepted 20.11.2024