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Agent-based modeling under partial and full knowledge learning settings to simulate financial markets

机译:在部分和全部知识学习设置下的基于代理的建模来模拟金融市场

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In the paper we show how L-FABS can be applied in a partial knowledge learning scenario or a full knowledge learning scenario to approximate financial time series. L-FABS combines agent-based simulation with machine learning to model the behavior of financial time series. We also discuss why Partial Knowledge and Full Knowledge learning scenario are relevant to the modeling of financial time series and how they can be used to assess the robustness of a modeling system for financial time series. In a Partial Knowledge learning setting usually only the initial conditions of the time series are provided, while in a Full Knowledge learning scenario any value of the financial time series is exploited as soon as it is available. An extensive experimental analysis of L-FABS is reported under a variety of financial time series and time frames.
机译:在本文中,我们展示了L-FABS如何应用于部分知识学习场景或全部知识学习场景中,以近似财务时间序列。 L-FABS将基于代理的模拟与机器学习相结合,以对财务时间序列的行为进行建模。我们还将讨论为何部分知识和完全知识学习方案与金融时间序列的建模相关,以及它们如何用于评估金融时间序列的建模系统的鲁棒性。在部分知识学习设置中,通常只提供时间序列的初始条件,而在完全知识学习方案中,财务时间序列的任何价值都将在可用时立即被利用。在各种财务时间序列和时间框架下,对L-FABS进行了广泛的实验分析。

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