RUDDER: Return Decomposition for Delayed Rewards

Arjona-Medina, Jose A., Gillhofer, Michael, Widrich, Michael, Unterthiner, Thomas, Brandstetter, Johannes, Hochreiter, Sepp

Neural Information Processing Systems 

We propose RUDDER, a novel reinforcement learning approach for delayed rewards in finite Markov decision processes (MDPs). In MDPs the Q-values are equal to the expected immediate reward plus the expected future rewards. The latter are related to bias problems in temporal difference (TD) learning and to high variance problems in Monte Carlo (MC) learning. Both problems are even more severe when rewards are delayed. RUDDER aims at making the expected future rewards zero, which simplifies Q-value estimation to computing the mean of the immediate reward.