Education, Science, Technology, Innovation and Life
Open Access
Sign In

Public economic management decision model based on improved ant colony algorithm

Download as PDF

DOI: 10.23977/acccm.2023.051005 | Downloads: 5 | Views: 315

Author(s)

Daidi Hu 1

Affiliation(s)

1 Lyceum of the Philippines University, Manila, Philippines

Corresponding Author

Daidi Hu

ABSTRACT

With the development of economy, public economic management is becoming more and more important, and it is necessary to make reasonable decisions on public economy. It is difficult for traditional decision-making methods to meet the needs of current public economic management. On this basis, this paper proposes a public economic management decision model with improved ant colony algorithm. Based on the improved ant colony algorithm, the model can be used to optimize public economic management decisions by improving ant colony algorithm.

KEYWORDS

Improved ant colony algorithm; Public economic management; Decision model

CITE THIS PAPER

Daidi Hu, Public economic management decision model based on improved ant colony algorithm. Accounting and Corporate Management (2023) Vol. 5: 35-39. DOI: http://dx.doi.org/10.23977/acccm.2023.051005.

REFERENCES

[1] Yi N, Xu J, Yan L, et al. Task optimization and scheduling of distributed cyber–physical system based on improved ant colony algorithm[J]. Future Generation Computer Systems, 2020, 109:134-148. DOI:10. 1016/j. future. 2020. 03. 051. 
[2] Goniewicz, K., Khorram-Manesh, A., Hertelendy, A. J., Goniewicz, M., Naylor, K., & Burkle Jr, F. M. (2020). Current response and management decisions of the European Union to the COVID-19 outbreak: A review. Sustainability, 12(9), 838.
[3] Liu F, Gong H, Cai L, et al. Prediction of Ammunition Storage Reliability Based on Improved Ant Colony Algorithm and BP Neural Network [J]. Complexity, 2019, 2019. DOI:10. 1155/2019/5039097. 
[4] Batova M, Baranov V, Mayorov S. Automation of Economic Activity Management of High-Tech Structures of Innovation-Oriented Clusters [J]. Journal of Industrial Integration and Management, 2021, 06(01):15-30. DOI:10. 1142/ S2424862220500256. 
[5] Li J, Chung S J, Yang M B, et al. Multidimensional data management decision of the ground LiDAR resources based on the improved differential evolution algorithm[J]. Basic&clinical pharmacology&toxicology. 2019(S6):125. 
[6] Fu H, Li H. Research on water resources dispatch model based on improved genetic algorithm–water resources dispatch model[J]. Water Science&Technology Water Supply, 2020(12). DOI:10. 2166/ws. 2020. 344. 
[7] Li P, Chen H. An Estimation Algorithm of Extended Kalman Filter based on improved Thevenin Model for the management of Lithium Battery System [C]//2019:032048. DOI:10. 1088/1755-1315/310/3/032048. 
[8] Chen J, Gui P, Ding T, et al. Optimization of Transportation Routing Problem for Fresh Food by Improved Ant Colony Algorithm Based on Tabu Search [J]. Sustainability, 2019, 11. DOI:10. 3390/su11236584. 
[9] Liu X M. Multi objective optimization model of railway transportation logistics network based on improved ant colony algorithm[C]//Proceedings of the 13th EAI International Conference on Mobile Multimedia Communications, Mobimedia 2020, 27-28 August 2020, Cyberspace. 2020. DOI:10. 4108/eai. 27-8-2020. 2294624. 
[10] Pamuar D, Puka A, Stevi E, et al. A new intelligent MCDM model for HCW management:The integrated BWM–MABAC model based on D numbers [J]. Expert Systems with Applications, 2021, 175:114862. DOI:10. 1016/ j. eswa. 2021. 114862.

Downloads: 13974
Visits: 185195

All published work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright © 2016 - 2031 Clausius Scientific Press Inc. All Rights Reserved.