Modeling and optimization of strategies for making individual decisions in multi-agent socio-economic systems with the use of machine learning

IF 0.6 Q4 BUSINESS
A. Akopov
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引用次数: 0

Abstract

This article presents a new approach to modeling and optimizing individual decision-making strategies in multi-agent socio-economic systems (MSES). This approach is based on the synthesis of agent-based modeling methods, machine learning and genetic optimization algorithms. A procedure for the synthesis and training of artificial neural networks (ANNs) that simulate the functionality of MSES and provide an approximation of the values of its objective characteristics has been developed. The feature of the two-step procedure is the combined use of particle swarm optimization methods (to determine the optimal values of hyperparameters) and the Adam machine learning algorithm (to compute weight coefficients of the ANN). The use of such ANN-based surrogate models in parallel multi-agent real-coded genetic algorithms (MA-RCGA) makes it possible to raise substantially the time-efficiency of the evolutionary search for optimal solutions. We have conducted numerical experiments that confirm a significant improvement in the performance of MA-RCGA, which periodically uses the ANN-based surrogate-model to approximate the values of the objective and fitness functions. A software framework has been designed that consists of the original (reference) agent-based model of trade interactions, the ANN-based surrogate model and the MA-RCGA genetic algorithm. At the same time, the software libraries FLAME GPU, OpenNN (Open Neural Networks Library), etc., agent-based modeling and machine learning methods are used. The system we developed can be used by responsible managers.
利用机器学习对多智能体社会经济系统中的个体决策策略进行建模和优化
本文提出了多智能体社会经济系统(MSES)中个体决策策略建模和优化的新方法。该方法是基于基于agent的建模方法、机器学习和遗传优化算法的综合。人工神经网络(ann)的合成和训练程序,模拟MSES的功能,并提供其客观特征值的近似值已经开发出来。两步过程的特点是结合使用粒子群优化方法(确定超参数的最优值)和Adam机器学习算法(计算人工神经网络的权重系数)。在并行多智能体实数编码遗传算法(MA-RCGA)中使用这种基于人工神经网络的代理模型,可以大大提高进化搜索最优解的时间效率。我们已经进行了数值实验,证实了MA-RCGA的性能有显着改善,它定期使用基于ann的代理模型来近似目标函数和适应度函数的值。设计了一个软件框架,该框架由原始的(参考)基于代理的贸易交互模型、基于人工神经网络的代理模型和MA-RCGA遗传算法组成。同时使用了FLAME GPU、OpenNN (Open Neural Networks Library)等软件库,以及基于agent的建模和机器学习方法。我们开发的系统可供负责任的管理者使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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