Over the past several years, we have been systematically exploring the application of this fundamental notion to a broader set of natural problems in probabilistic artificial intelligence, and have found a number of striking examples where it leads to novel algorithms and analyses for core problems. In particular, by applying uniform convergence arguments to carefully structured but very sparse samples in probabilistic environments, we obtain:
* A new algorithm providing a near-optimal solution to the exploration-exploitation trade-off in Markov decision processes, a basic problem in reinforcement learning;
* A sparse sampling algorithm for planning in Markov decision processes whose running time has no dependence on the number of states;
* Powerful new algorithms for probabilistic inference in Bayesian networks:
*Algorithms for computing approximate Nash equilibria in large-population games.
These are only a few of the many algorithmic applications of learning theory methods in modern AI. This talk will present a self contained survey of these developments.