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Discussion Paper

Stochastic Algorithms for Dynamic Models: Markov Perfect Equilibrium, and the ‘Curse’ of Dimensionality

This paper provides an algorithm for computing policies for dynamic economic models whose state vectors evolve as ergodic Markov processes. The algorithm can be described as a simple learning process (one that agents might actually use). It has two features which break the relationship between its computational requirements and the dimension of the model’s state space. First the integral over future states needed to determine policies is never calculated; rather it is estimated by a simple average of past outcomes. Second, the algorithm never computes policies at all points.