Keywords: intelligent decision-making support, particle swarm method, nonlinear optimization, portfolio optimization, risk measure
Intellectual decision-making support algorithm on the securities portfolio formation based of the swarm intelligence
UDC 004.023, 004.89
DOI: 10.26102/2310-6018/2021.33.2.029
The article discusses the issue of the need for intellectual support for decision-making when managing of the securities portfolio forming process. Modern systems for making investors decisions are based on the classical portfolio management theory and supposed the market efficiency requirement fulfillment, but the modern stock market, both domestic and global, cannot satisfy this condition. For effective decisions, it is necessary to use new methods and models of the portfolio management. To find the optimal portfolio, a modified particle swarm method is used and its advantages are investigated, among which the reduction in the number of objective function computations by 34% or more. The proposed algorithm for intelligent decision support makes it possible of choice according to three aspects: under the method of determining the model parameters, under the financial risk assessment model and under the optimal portfolio structure. The knowledge base contains a database and a precedents base, a base of rules includes indicators of the financial risk assessment model effectiveness aggregated for all precedents. The growth of the precedents base makes it possible to increase the authenticity of the risk measure efficiency assessment and makes it possible to form (or adapt) production rules.
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Keywords: intelligent decision-making support, particle swarm method, nonlinear optimization, portfolio optimization, risk measure
For citation: Kondrateva O. Intellectual decision-making support algorithm on the securities portfolio formation based of the swarm intelligence. Modeling, Optimization and Information Technology. 2021;9(2). URL: https://moitvivt.ru/ru/journal/pdf?id=975 DOI: 10.26102/2310-6018/2021.33.2.029 (In Russ).
Revised 06.08.2021
Accepted 11.08.2021
Published 30.06.2021