Publication | Open Access
Improving Generalization in Meta Reinforcement Learning using Learned Objectives
59
Citations
45
References
2019
Year
Artificial IntelligenceCognitive ScienceEngineeringMachine LearningReward HackingMeta-learningAutonomous LearningMeta Reinforcement LearningGeneral Learning AlgorithmsAlgorithm MetagenrlSequential Decision MakingComputer ScienceIntelligent SystemsRobot LearningMulti-agent LearningMeta-learning (Computer Science)Biological Evolution
Biological evolution has distilled the experiences of many learners into the general learning algorithms of humans. Our novel meta reinforcement learning algorithm MetaGenRL is inspired by this process. MetaGenRL distills the experiences of many complex agents to meta-learn a low-complexity neural objective function that decides how future individuals will learn. Unlike recent meta-RL algorithms, MetaGenRL can generalize to new environments that are entirely different from those used for meta-training. In some cases, it even outperforms human-engineered RL algorithms. MetaGenRL uses off-policy second-order gradients during meta-training that greatly increase its sample efficiency.
| Year | Citations | |
|---|---|---|
Page 1
Page 1