METHOD FOR CORRECTION OF MULTISUBJECTIVE MULTIFACTORIAL ENVIRONMENTS OF SOFTWARE COMPLEXES’ SUPPORT

Authors

  • A. I. Pukach Lviv Polytechnic National University, Lviv, Ukraine
  • V. M. Teslyuk Lviv Polytechnic National University, Lviv, Ukraine

DOI:

https://doi.org/10.15588/1607-3274-2026-1-17

Keywords:

software product, comprehensive support, impact factors, automation, correction, multisubjective multifactorial environment, neural networks, multilayer perceptron

Abstract

Context. The problem of correction of multisubjective multifactorial environments of software complexes’ support is considered in this research, necessary to provide the possibility(-ies) of adjusting the perception’s subjectivization of the support object (the supported software, as well as related processes of its complex support), caused by the influence of relevant impact factors. The object of research is a process of correction of multisubjective multifactorial environments of software complexes’ support. The subject of research are methods and means of correction of a multisubjective multifactorial environments of software complexes’ support, as well as methods of an artificial neural networks (in particular: a multilayer perceptron).
Objective – is the development of method for correction of multisubjective multifactorial environments of software complexes’
support.
Method. The development of a method for correction of multisubjective multifactorial environments of software’ support is proposed. which provides possibilities for the necessary adjustments of the perception subjectivization of the researched support objects (which could be either the supported software itself, as well as the related processes for its comprehensive support) relevant (directly or directly) interacting subjects, who provide and implement this comprehensive support of the researched supported software product, in order to provide the possibility(-ies) of further automation and intellectualization of its comprehensive support.
Results. The results of functioning of the developed method – are relevant models of adjusted multisubjective multifactorial environments of software complexes’ support, obtained in result of solving a relevant scientific and applied problem of adjusting such class of environments. The developed method provides the opportunity(-ies) for studying the processes of collective perception’s subjectivization (caused by the influence of existing impact factors) of the objects of comprehensive support by the appropriate related subjects, which directly provide and implement this support, and also facilitates and ensures for further automation and intellectualization of such complex support of various software products and complexes in this separate and exact functional and procedural segment. As a practical approbation of the developed method, – the results of solved applied practical task of determination and further correction the impact factors of maximum imbalance of the researched multisubjective multifactorial environment (representing the technician team of the supported software product) are given.
Conclusions. The developed method solves the declared problem of correction of multisubjective multifactorial environments of
software complexes’ support. At the same time, the obtained results of performed practical approbation of the developed method confirm its functionality in solving a range of scientific and applied tasks based on the processes of collective perception’s subjectivization of support objects (the supported software complexes, as well as the processes of their comprehensive support), which (those tasks), in turn, are included into the cluster of a more valuable scientific and applied problem of software products’ comprehensive support automation and intellectualization.

Author Biographies

A. I. Pukach, Lviv Polytechnic National University, Lviv

PhD, Assistant of Automated Control Systems Department Institute of Computer Sciences
and Informational Technologies

V. M. Teslyuk, Lviv Polytechnic National University, Lviv

Doctor of Sciences, Professor, Head of Automated Control Systems Department,
Institute of Computer Sciences and Informational Technologies

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Published

2026-03-27

How to Cite

Pukach, A. I. ., & Teslyuk, V. M. (2026). METHOD FOR CORRECTION OF MULTISUBJECTIVE MULTIFACTORIAL ENVIRONMENTS OF SOFTWARE COMPLEXES’ SUPPORT. Radio Electronics, Computer Science, Control, (1), 201–213. https://doi.org/10.15588/1607-3274-2026-1-17

Issue

Section

Progressive information technologies