Litcius/Paper detail

Forward and inverse reinforcement learning sharing network weights and hyperparameters

Eiji Uchibe, Kenji Doya

2021Neural Networks23 citationsDOIOpen Access PDF

Abstract

This paper proposes model-free imitation learning named Entropy-Regularized Imitation Learning (ERIL) that minimizes the reverse Kullback-Leibler (KL) divergence. ERIL combines forward and inverse reinforcement learning (RL) under the framework of an entropy-regularized Markov decision process. An inverse RL step computes the log-ratio between two distributions by evaluating two binary discriminators. The first discriminator distinguishes the state generated by the forward RL step from the expert's state. The second discriminator, which is structured by the theory of entropy regularization, distinguishes the state-action-next-state tuples generated by the learner from the expert ones. One notable feature is that the second discriminator shares hyperparameters with the forward RL, which can be used to control the discriminator's ability. A forward RL step minimizes the reverse KL estimated by the inverse RL step. We show that minimizing the reverse KL divergence is equivalent to finding an optimal policy. Our experimental results on MuJoCo-simulated environments and vision-based reaching tasks with a robotic arm show that ERIL is more sample-efficient than the baseline methods. We apply the method to human behaviors that perform a pole-balancing task and describe how the estimated reward functions show how every subject achieves her goal.

Topics & Concepts

DiscriminatorComputer scienceKullback–Leibler divergenceReinforcement learningHyperparameterArtificial intelligencePrinciple of maximum entropyEntropy (arrow of time)AlgorithmMachine learningMathematical optimizationMathematicsDetectorPhysicsQuantum mechanicsTelecommunicationsReinforcement Learning in RoboticsNeural dynamics and brain functionAdaptive Dynamic Programming Control
Forward and inverse reinforcement learning sharing network weights and hyperparameters | Litcius