Policy gradients in linearly-solvable MDPs

Emanuel Todorov

Advances in Neural Information Processing Systems 23 (NIPS 2010)

We present policy gradient results within the framework of linearly-solvable MDPs. For the first time, compatible function approximators and natural policy gradients are obtained by estimating the cost-to-go function, rather than the (much larger) state-action advantage function as is necessary in traditional MDPs. We also develop the first compatible function approximators and natural policy gradients for continuous-time stochastic systems.