Transfer learning and domain adaptation based on modeling of socio-economic systems

O. Kazakov, Olga V. Mikheenko
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引用次数: 2

Abstract

This article deals with the application of transfer learning methods and domain adaptation in a recurrent neural network based on the long short-term memory architecture (LSTM) to improve the efficiency of management decisions and state economic policy. Review of existing approaches in this area allows us to draw a conclusion about the need to solve a number of practical issues of improving the quality of predictive analytics for preparing forecasts of the development of socio-economic systems. In particular, in the context of applying machine learning algorithms, one of the problems is the limited number of marked data. The authors have implemented training of the original recurrent neural network on synthetic data obtained as a result of simulation, followed by transfer training and domain adaptation. To achieve this goal, a simulation model was developed by combining notations of system dynamics with agent-based modeling in the AnyLogic system, which allows us to investigate the influence of a combination of factors on the key parameters of the efficiency of the socio-economic system. The original LSTM training was realized with the help of TensorFlow, an open source software library for machine learning. The suggested approach makes it possible to expand the possibilities of complex application of simulation methods for building a neural network in order to justify the parameters of the development of the socio-economic system and allows us to get information about its future state.
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基于社会经济系统建模的迁移学习和领域适应
本文讨论了迁移学习方法和领域自适应在基于长短期记忆结构(LSTM)的递归神经网络中的应用,以提高管理决策和国家经济政策的效率。通过审查这一领域的现有方法,我们可以得出结论,即需要解决一些实际问题,即提高预测分析的质量,以编制社会经济系统发展的预测。特别是,在应用机器学习算法的背景下,问题之一是标记数据的数量有限。作者对模拟获得的合成数据进行了原始递归神经网络的训练,然后进行了转移训练和域自适应。为了实现这一目标,在AnyLogic系统中,通过将系统动力学的符号与基于代理的建模相结合,开发了一个模拟模型,使我们能够研究多种因素组合对社会经济系统效率关键参数的影响。最初的LSTM训练是在TensorFlow的帮助下实现的,TensorFlow是一个用于机器学习的开源软件库。所提出的方法可以扩大模拟方法复杂应用于构建神经网络的可能性,以证明社会经济系统发展的参数,并使我们能够获得有关其未来状态的信息。
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