Worst-Case Regret Bounds for Exploration via Randomized Value Functions
–Neural Information Processing Systems
This paper studies a recent proposal to use randomized value functions to drive exploration in reinforcement learning. These randomized value functions are generated by injecting random noise into the training data, making the approach compatible with many popular methods for estimating parameterized value functions. By providing a worst-case regret bound for tabular finite-horizon Markov decision processes, we show that planning with respect to these randomized value functions can induce provably efficient exploration. Papers published at the Neural Information Processing Systems Conference.
Neural Information Processing Systems
Mar-19-2020, 02:32:47 GMT