在展望过程中使用神经网络

A. O. Alekseev, V. Y. Linnik, V. V. Chushkina
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引用次数: 0

摘要

文章探讨了应用不同架构的神经网络来完成展望过程中的任务的情况。文章的目的是确定在展望程序的哪些阶段应用神经网络是合理的,以及采用何种结构。文章揭示了展望与预测过程之间的区别。此外,还考虑了展望的概念、主要阶段、分类。研究证实,在收集和处理原始信息、制定设想方案和问题解决方案、交流和编写报告等阶段,应用神经网络可以极大地促进展望程序。研究表明,不同类型的神经网络适用于不同的展望任务。文章指出,神经网络可以处理更大量的数据并自动检测复杂的模式,这使其在环境不确定和多变的条件下更加有效。文章强调了进一步研究和开发在展望过程中应用神经网络的方法的重要性,同时考虑到特定行业和任务类型的特殊性。在研究过程中,作者使用了诊断、建立因果关系等分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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 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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