https://128.84.21.199/pdf/1602.02722v1.pdf
We propose and study a new tractable model for reinforcement learning with high-dimensional observation called Contextual-MDPs, generalizing contextual bandits to a sequential decision making setting.
These models require an agent to take actions based on high-dimensional observations (features) with the goal of achieving long-term performance competitive with a large set of policies. Since the size of the observation space is a primary obstacle to sample-efficient learning, Contextual-MDPs are assumed to be summarizable by a small number of hidden states. In this setting, we design a new reinforcement learning algorithm that engages in global exploration while using a function class to approximate future performance.
We also establish a sample complexity guarantee for this algorithm, proving that it learns near optimal behavior after a number of episodes that is polynomial in all relevant parameters, logarithmic in the number of policies, and independent of the size of the observation space. This represents an exponential improvement on the sample complexity of all existing alternative approaches and provides theoretical justification for reinforcement learning with function approximation.