Estimating Behavioral Agent-Based Models for Financial Markets through Machine Learning Surrogates

Heba M. Ezzat
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Abstract

Traditional economic assumptions such as rational, representative agents and efficient market hypothesis failed to explain the macro-behavior of financial markets. On the other hand, agent-based approach proves high potentials in modeling bounded rational and heterogeneous micro-behaviors. This approach captures important stylized facts of financial markets. However, the high complexity of estimating agent-based models parameters precludes using these models in the forecasting process. This problem limits the applicability of agent-based models in decision making and policy formulation processes. Thereafter, this research aims at introducing a prospect for estimating agent-based models for financial markets through surrogate modeling approach. Surrogate models are considered as novel parameter estimation method in economics though it is a well-defined method in engineering. Few efforts have been spent to estimate parameters using surrogate models.
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通过机器学习代理估计基于行为主体的金融市场模型
传统的经济学假设,如理性代理人、代表性代理人、有效市场假说等,都无法解释金融市场的宏观行为。另一方面,基于智能体的方法在模拟有界理性和异构微观行为方面具有很高的潜力。这种方法抓住了金融市场的重要风格化事实。然而,估计基于智能体的模型参数的高度复杂性阻碍了在预测过程中使用这些模型。这一问题限制了基于智能体的模型在决策和政策制定过程中的适用性。因此,本研究旨在透过代理模型方法,对金融市场中基于代理的模型进行预估。替代模型在工程上是一种定义良好的参数估计方法,但在经济学上被认为是一种新的参数估计方法。很少有人用替代模型来估计参数。
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