An efficient, reliable, and interpretable global solution method, the Deep learning-based algorithm for Heterogeneous Agent Models (DeepHAM), is proposed for solving high dimensional heterogeneous agent models with aggregate shocks. The state distribution is approximately represented by a set of optimal generalized moments. Deep neural networks are used to approximate the value and policy functions, and the objective is optimized over directly simulated paths. In addition to being an accurate global solver, this method has three additional features. First, it is computationally efficient in solving complex heterogeneous agent models, and it does not suffer from the curse of dimensionality. Second, it provides a general and interpretable representation of the distribution over individual states, which is crucial in addressing the classical question of whether and how heterogeneity matters in macroeconomics. Third, it solves the constrained efficiency problem as easily as it solves the competitive equilibrium, which opens up new possibilities for studying optimal monetary and fiscal policies in heterogeneous agent models with aggregate shocks.
翻译:一种高效、可靠和可解释的全球解决方案方法,即基于深层次学习的异质剂模型算法(DepHAM),是为解决具有综合冲击的高维多元剂模型而提出的。状态分布大约由一套最佳通用时刻所代表。深神经网络用来估计价值和政策功能,目标在直接模拟路径上得到优化。这一方法除了是一个准确的全球求解器之外,还具有另外三个特征。首先,它在解决复杂的异质剂模型方面计算效率很高,不受维度诅咒的影响。其次,它为单个国家的分布提供了一种可解释的一般代表性,这对于解决宏观经济中异质性是否和如何重要的传统问题至关重要。第三,它很容易解决受限制的效率问题,因为它解决了竞争性平衡,为研究具有综合冲击的混合剂模型的最佳货币和财政政策开辟了新的可能性。