Research on system economic operation and management based on deep learning

It is of great significance to accurately predict the operation of the system economy, analyze the gains and losses of macrocontrol policies, evaluate the operation quality of the economic system, and correctly formulate the future development plan and strategy. This paper introduces the deep belief...

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Main Authors: Wangtao, -, Zheng, Zhenzhu, Wang, Peiyuan, Liu, Xiaobin
Format: Article
Published: Hindawi Ltd 2022
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Online Access:http://eprints.um.edu.my/42976/
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Institution: Universiti Malaya
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spelling my.um.eprints.429762023-09-15T03:45:27Z http://eprints.um.edu.my/42976/ Research on system economic operation and management based on deep learning Wangtao, - Zheng, Zhenzhu Wang, Peiyuan Liu, Xiaobin QA75 Electronic computers. Computer science It is of great significance to accurately predict the operation of the system economy, analyze the gains and losses of macrocontrol policies, evaluate the operation quality of the economic system, and correctly formulate the future development plan and strategy. This paper introduces the deep belief network, which has attracted much attention in the field of deep learning in recent years, into the research of system economic operation and management. This method solves the problems of slow training and learning speed, easy to fall into local minima and insufficient generalization of BP artificial neural network in the research of system economic operation and management. Taking the consumer price index and total import and export volume of F Province as the research object, the experiment proves that DBN has better application in system economic operation and management than BP neural network and vector autoregressive analysis. This paper analyzes and compares the modeling performance of DBN, BP neural network, and VaR method from many aspects, such as prediction accuracy, training convergence speed, and pretraining with or without samples. Relevant empirical results show that DBN has better economic prediction performance than BP neural network and ver. On the other hand, DBN can effectively use nonstandard samples to pretrain network weight parameters. Therefore, DBN is a better operation and management modeling means of economic system, with excellent practicability and application, and is expected to be popularized and applied in the field of economic forecasting. Hindawi Ltd 2022-03 Article PeerReviewed Wangtao, - and Zheng, Zhenzhu and Wang, Peiyuan and Liu, Xiaobin (2022) Research on system economic operation and management based on deep learning. Scientific Programming, 2022. ISSN 1058-9244, DOI https://doi.org/10.1155/2022/4845014 <https://doi.org/10.1155/2022/4845014>. 10.1155/2022/4845014
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Wangtao, -
Zheng, Zhenzhu
Wang, Peiyuan
Liu, Xiaobin
Research on system economic operation and management based on deep learning
description It is of great significance to accurately predict the operation of the system economy, analyze the gains and losses of macrocontrol policies, evaluate the operation quality of the economic system, and correctly formulate the future development plan and strategy. This paper introduces the deep belief network, which has attracted much attention in the field of deep learning in recent years, into the research of system economic operation and management. This method solves the problems of slow training and learning speed, easy to fall into local minima and insufficient generalization of BP artificial neural network in the research of system economic operation and management. Taking the consumer price index and total import and export volume of F Province as the research object, the experiment proves that DBN has better application in system economic operation and management than BP neural network and vector autoregressive analysis. This paper analyzes and compares the modeling performance of DBN, BP neural network, and VaR method from many aspects, such as prediction accuracy, training convergence speed, and pretraining with or without samples. Relevant empirical results show that DBN has better economic prediction performance than BP neural network and ver. On the other hand, DBN can effectively use nonstandard samples to pretrain network weight parameters. Therefore, DBN is a better operation and management modeling means of economic system, with excellent practicability and application, and is expected to be popularized and applied in the field of economic forecasting.
format Article
author Wangtao, -
Zheng, Zhenzhu
Wang, Peiyuan
Liu, Xiaobin
author_facet Wangtao, -
Zheng, Zhenzhu
Wang, Peiyuan
Liu, Xiaobin
author_sort Wangtao, -
title Research on system economic operation and management based on deep learning
title_short Research on system economic operation and management based on deep learning
title_full Research on system economic operation and management based on deep learning
title_fullStr Research on system economic operation and management based on deep learning
title_full_unstemmed Research on system economic operation and management based on deep learning
title_sort research on system economic operation and management based on deep learning
publisher Hindawi Ltd
publishDate 2022
url http://eprints.um.edu.my/42976/
_version_ 1778161686758293504