ANALYSIS OF THE APPLICABILITY OF EXISTING METHODS AND TECHNOLOGIES OF PROJECT ORIENTED MANAGEMENT FOR GOVERNMENT AGENCIES IN THE REPUBLIC OF KAZAKHSTAN

Orynbassar K. Joldasbayev, Dinara Rakhmatullaeva, Denis Polenov, Seryk Joldasbayev

Abstract


This article considers the main models of the architecture of agency systems of project-oriented management as stages of their development. The agent technology allows us to decentralize problem solving and create complex systems of project-oriented management, combining various processing methods such as modeling, reasoning, and machine learning, and also allows us to distribute knowledge. One of these models is an aggregated architecture for systems of project-oriented management, based on agents of a marked deductive system. This approach allows us to divide algorithms into separate modules and distribute the knowledge base into parts. The focus is on existing multi-agent data mining architectures and the roles of agents in them. An architecture is described to support the decision-making process in conjunction with the use of event-driven and task-driven data mining agents, as well as helpers and knowledge management agents. The article then considers a mathematical model of the proposed decision-making system, identifies key parameters, and suggests improvements to the model based on the proposed integrated software solution. The practical significance of this study is determined by the fact that not only was the software architecture developed and presented for the first time, but also a fully extended mathematical model of a project-oriented management system.


Keywords


agent data developer, decision support, expert system based on agents, logic of reasonable reasoning.

Full Text:

PDF

References


Decision support systems. 2015. https//www.ukessays.com/essays/it-research/decision-support-systems.php?vref=1 [2019-11-15]

Decree of the President of the Republic of Kazakhstan No 636. 2018. “On approval of the Strategic Development Plan of the Republic of Kazakhstan until 2025 and recognition of some decrees of the President of the Republic of Kazakhstan”. https://online.zakon.kz/Document/?doc_id=38490966#pos=354;-55 [2019-11-18]

Fariz, A. 2015. “Using multi-agents systems in distributed data mining: a survey”. Journal of Theoretical and Applied Information Technology, 73 (3): 427-440.

Foster, D., McGregor, C., and El-Masri, S. 2005. “A Survey of Agent-Based Intelligent Decision Support Systems to Support Clinical Management and Research”. In: Proceedings of the Fourth International Joint Conference on Autonomous Agents and Multiagent Systems, 132-137. New York: ACM.

Han, J. 2012. Data mining concepts and techniques. Waltham: Morgan Kaufmann.

Harnandez, M. 2003. Database design for mere mortals. A hands-on guide to relational database systems. New York: Addison-Wesley.

Legien, G. 2017. “Agent-based decision support system for technology recommendation”. Procedia Computer Science, 108: 897-906.

Marakas, G. 1999. Decision support systems in the 21st century. New Jersey: Prentice Hall.

Marken, G. 2016. “Decision support systems and data mining – an integrated approach”. International Journal of Recent Trends in Engineering & Research, 2 (5): 98-104.

Michalski, R., and Collins, A. 1989. “The logic of plausible reasoning”. Cognitive Science, 13: 1-49.

Parsons, S. 1999. “Robots with the Best of Intentions”. In: P. Robots (Ed.), Towards Intelligent Mobile, 329-338. Bristol: IEEE.

Sauter, V. 1997. Decision support systems. An applied managerial approach. New Jersey: John Wiley & Sons, Inc.

Sharma, D., and Shadabi, F. 2014. “Multi-Agents Based Data Mining for Intelligent Decision Support Systems”. In: 2nd International Conference on Systems and Informatics, 241-245. Tavria: Scientific Remarks of the Tavrian National University of V.I. Vernadsky.

Sokolova, M., and Fernandez-Caballero, A. 2009. “Modeling and implementing an agent-based environmental health impact decision support system”. Expert Systems with Applications, 36: 2603-2614.

Turban, E., and Aronson, J. 2008. Decision support systems and intelligent systems. New Jersey: Prentice Hall.

Tweedale, J. 2016. Intelligent decision technology support in practice. Berlin: Springer.

Wilk-Kolodziejczyk, D. 2017. “Reasoning algorithm for creative decision support system integrating inference and machine learning”. Computer Science, 18 (3): 317-338.




DOI: https://doi.org/10.13165/VPA-20-19-2-10

Refbacks

  • There are currently no refbacks.




"Public Policy and Administration" ISSN online 2029-2872 / ISSN print 1648-2603