|
This article is cited in 1 scientific paper (total in 1 paper)
Reinforcement machine learning model for sports infrastructure development planning
V. A. Sudakovab, I. A. Belozerova, E. S. Prudkovaa a Plekhanov Russian University of Economics
b Keldysh Institute of Applied Mathematics, Russian Academy of Sciences
Abstract:
The paper considers the actual task of planning the rational development of sports infrastructure in conditions of limited resources. The development of a mathematical model
for the evaluation of sports infrastructure projects and the schedule for their implementation was carried out. To evaluate projects, it is proposed to use methods of multi-criteria
decision analysis based on fuzzy preference areas. The search for the optimal parameters
of the proposed model is difficult due to the presence of binary variables that make the
problem NP-hard. To find a solution close to the optimal one, a machine learning model
with reinforcement is proposed. Software has been developed that allows both ranking
projects and determining the schedule for their implementation, taking into account
available resources and needs. An algorithmic and software solution based on a machine
learning model with reinforcement is invariant with respect to the subject area and can
also be used in other combinatorial optimization problems. On the example of the problem of choosing regions for the construction of basketball courts, computational experiments were carried out for the proposed solution.
Keywords:
reinforcement machine learning model, multicriteria analysis, infrastructure project, combinatorial optimization.
Received: 06.04.2022 Revised: 06.04.2022 Accepted: 12.09.2022
Citation:
V. A. Sudakov, I. A. Belozerov, E. S. Prudkova, “Reinforcement machine learning model for sports infrastructure development planning”, Matem. Mod., 34:12 (2022), 103–115; Math. Models Comput. Simul., 15:4 (2023), 608–614
Linking options:
https://www.mathnet.ru/eng/mm4428 https://www.mathnet.ru/eng/mm/v34/i12/p103
|
Statistics & downloads: |
Abstract page: | 171 | Full-text PDF : | 27 | References: | 32 | First page: | 3 |
|