Agent-based computational economics is a field with a rich academic history, yet one which has struggled to enter mainstream policy design toolboxes, plagued by the challenges associated with representing a complex and dynamic reality. The field of Reinforcement Learning (RL), too, has a rich history, and has recently been at the centre of several exponential developments. Modern RL implementations have been able to achieve unprecedented levels of sophistication, handling previously unthinkable degrees of complexity. This review surveys the historical barriers of classical agent-based techniques in economic modelling, and contemplates whether recent developments in RL can overcome any of them.
翻译:以代理为基础的计算经济学是一个领域,具有丰富的学术历史,然而,它却在努力进入主流政策设计工具箱,面对与代表复杂和动态现实有关的挑战。 强化学习领域也有丰富的历史,最近成为若干指数发展的中心。 现代RL的实施已经达到了前所未有的先进程度,处理了以前难以想象的复杂性。 本审查调查了古典基于代理的技术在经济建模中的历史障碍,并思考了最近RL的发展能否克服其中的任何障碍。