A Linear Programming Approach to Approximate Dynamic
Programming
Ben Van Roy,
Stanford Unversity:
Thursday, February 20, 2003, 4:30 PM,
Princeton University, Friend Center 006
The curse of dimensionality gives rise to prohibitive computational
requirements that render infeasible the exact solution of large-scale
stochastic control problems. I will discuss an approach to
approximating dynamic programming value functions based on a linear
programming formulation. The approach ``fits'' a linear combination of
pre-selected basis functions to the dynamic programming cost-to-go
function. I will present some theoretical results on the approach and
experimental results involving queueing problems and the game of
Tetris.
|