Current issues in the development of multi-agent decision support systems at the sub-federal level

Victor I. Suslov
1. Institute of Economics and Industrial Engineering SB RAS, Novosibirsk, Russia
suslov@ieie.nsc.ru
Vitaliy S. Kostin
1. Institute of Economics and Industrial Engineering SB RAS, Novosibirsk, Russian Federation
Evgeniy Yu. Ivanov
1. Novosibirsk State University
The material was received by the Editorial Board: 25/03/2020

Abstract
The article reveals the problems which may arise in the development of multi-agent information systems for modeling regional economy (MASMRE) based on geographic information and agent-based approaches to modeling economic space as well as to studying and forecasting the specifics of emerging spatial systems and the ways these systems may occur.
MASMRE proposes an organizational system and open source tools to implement modern digital technologies and also an agent-based approach to modeling the regional economy, which helps to sustain innovative momentum for scientific and scientific-technical interaction, conduct joint research in remote access by providing accessible services, modules and algorithms, and allows the local governments, businesses and non-profit organizations to plan and monitor various projects implemented in a particular territory.
Key words
multi-agent system, public administration, regional economy, agent-based modeling, informatization, geographic information system.
Funding:
Article presents the results of the research project "Agent-based spatial decision support systems at the regional level" carried out with financial support of RFBR, project number XI.172.1.1. № АААА-А17-117022250132-2



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References: Suslov V. I., Kostin V.S., Ivanov E. Yu., Ibragimov N. M., Novikova T. S., Tsyplakov A. A. Current issues in the development of multi-agent decision support systems at the sub-federal level. World of Economics and Management. 2020, Vol.20, no.3. P. 5–26. DOI: 10.25205/2542-0429-2020-20-3-5-26