The use of neural networks in the foresight process

The article considers scenarios of application of neural networks of different architectures to fulfill tasks in the foresight process. The purpose of the article is to determine at what stages of the foresight procedure the application of neural networks is justified and with what architecture. The...

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Main Authors: A. O. Alekseev, V. Yu. Linnik, V. V. Chushkina
Format: Article
Language:English
Published: Publishing House of the State University of Management 2024-05-01
Series:Вестник университета
Subjects:
Online Access:https://vestnik.guu.ru/jour/article/view/5152
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author A. O. Alekseev
V. Yu. Linnik
V. V. Chushkina
author_facet A. O. Alekseev
V. Yu. Linnik
V. V. Chushkina
author_sort A. O. Alekseev
collection DOAJ
description The article considers scenarios of application of neural networks of different architectures to fulfill tasks in the foresight process. The purpose of the article is to determine at what stages of the foresight procedure the application of neural networks is justified and with what architecture. The differences between foresight and the process of forecasting are revealed. In addition, the concept of foresight, its main stages and phases, classification are considered. It is substantiated that the application of neural networks can significantly facilitate the foresight procedure at such stages as collection and processing of primary information, development of scenarios and solutions to problems, communication, and report preparation. It is shown that different types of neural networks are suitable for different foresight tasks. It is revealed that neural networks can process a larger amount of data and automatically detect complex patterns, which makes them more effective under conditions of environmental uncertainty and variability. The article ephasises the importance of further research and development of methods for applying neural networks in foresight processes with consideration to the specifics of particular industries and types of tasks. In the course of the research, the authors used analytical methods of diagnostics, establishing cause-and-effect relationships, etc.
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institution Kabale University
issn 1816-4277
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language English
publishDate 2024-05-01
publisher Publishing House of the State University of Management
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series Вестник университета
spelling doaj-art-127a17a3956d4f3e9d120a7d1d3b124d2025-02-04T08:28:20ZengPublishing House of the State University of ManagementВестник университета1816-42772686-84152024-05-010351010.26425/1816-4277-2024-3-5-103045The use of neural networks in the foresight processA. O. Alekseev0V. Yu. Linnik1V. V. Chushkina2Limited Liability Company “NIIgazekonomika”State University of ManagementState University of ManagementThe article considers scenarios of application of neural networks of different architectures to fulfill tasks in the foresight process. The purpose of the article is to determine at what stages of the foresight procedure the application of neural networks is justified and with what architecture. The differences between foresight and the process of forecasting are revealed. In addition, the concept of foresight, its main stages and phases, classification are considered. It is substantiated that the application of neural networks can significantly facilitate the foresight procedure at such stages as collection and processing of primary information, development of scenarios and solutions to problems, communication, and report preparation. It is shown that different types of neural networks are suitable for different foresight tasks. It is revealed that neural networks can process a larger amount of data and automatically detect complex patterns, which makes them more effective under conditions of environmental uncertainty and variability. The article ephasises the importance of further research and development of methods for applying neural networks in foresight processes with consideration to the specifics of particular industries and types of tasks. In the course of the research, the authors used analytical methods of diagnostics, establishing cause-and-effect relationships, etc.https://vestnik.guu.ru/jour/article/view/5152foresightartificial intelligenceneural networksvision of the futureforesight stagesdata analysiscorporate foresighttrends
spellingShingle A. O. Alekseev
V. Yu. Linnik
V. V. Chushkina
The use of neural networks in the foresight process
Вестник университета
foresight
artificial intelligence
neural networks
vision of the future
foresight stages
data analysis
corporate foresight
trends
title The use of neural networks in the foresight process
title_full The use of neural networks in the foresight process
title_fullStr The use of neural networks in the foresight process
title_full_unstemmed The use of neural networks in the foresight process
title_short The use of neural networks in the foresight process
title_sort use of neural networks in the foresight process
topic foresight
artificial intelligence
neural networks
vision of the future
foresight stages
data analysis
corporate foresight
trends
url https://vestnik.guu.ru/jour/article/view/5152
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