Understanding household behaviour is essential for modelling macroeconomic dynamics and designing effective policy. While heterogeneous agent models offer a more realistic alternative to representative agent frameworks, their implementation poses significant computational challenges, particularly in continuous time. The Aiyagari-Bewley-Huggett (ABH) framework, recast as a system of partial differential equations, typically relies on grid-based solvers that suffer from the curse of dimensionality, high computational cost, and numerical inaccuracies. This paper introduces the ABH-PINN solver, an approach based on Physics-Informed Neural Networks (PINNs), which embeds the Hamilton-Jacobi-Bellman and Kolmogorov Forward equations directly into the neural network training objective. By replacing grid-based approximation with mesh-free, differentiable function learning, the ABH-PINN solver benefits from the advantages of PINNs of improved scalability, smoother solutions, and computational efficiency. Preliminary results show that the PINN-based approach is able to obtain economically valid results matching the established finite-difference solvers.
翻译:理解家庭行为对于模拟宏观经济动态和设计有效政策至关重要。虽然异质主体模型为代表性主体框架提供了更现实的替代方案,但其实现面临显著的计算挑战,尤其是在连续时间情形下。Aiyagari-Bewley-Huggett(ABH)框架被重构为偏微分方程组,通常依赖于基于网格的求解器,这些求解器受限于维度灾难、高计算成本和数值不精确性。本文提出ABH-PINN求解器,一种基于物理信息神经网络(PINNs)的方法,该方法将Hamilton-Jacobi-Bellman方程和Kolmogorov前向方程直接嵌入神经网络训练目标中。通过用无网格、可微分的函数学习替代基于网格的近似,ABH-PINN求解器受益于PINNs的优势,包括改进的可扩展性、更平滑的解和计算效率。初步结果表明,基于PINN的方法能够获得与现有有限差分求解器相匹配的经济学有效结果。