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Diversity is All You Need: Learning Skills without a Reward Function

About

Intelligent creatures can explore their environments and learn useful skills without supervision. In this paper, we propose DIAYN ('Diversity is All You Need'), a method for learning useful skills without a reward function. Our proposed method learns skills by maximizing an information theoretic objective using a maximum entropy policy. On a variety of simulated robotic tasks, we show that this simple objective results in the unsupervised emergence of diverse skills, such as walking and jumping. In a number of reinforcement learning benchmark environments, our method is able to learn a skill that solves the benchmark task despite never receiving the true task reward. We show how pretrained skills can provide a good parameter initialization for downstream tasks, and can be composed hierarchically to solve complex, sparse reward tasks. Our results suggest that unsupervised discovery of skills can serve as an effective pretraining mechanism for overcoming challenges of exploration and data efficiency in reinforcement learning.

Benjamin Eysenbach, Abhishek Gupta, Julian Ibarz, Sergey Levine• 2018

Related benchmarks

TaskDatasetResultRank
State ExplorationMaze2D Square-b
State Coverage Ratio48
22
Goal ReachingRoboKitchen (test)
Success Rate0.00e+0
16
JumpURLB Quadruped 1.0 (test)
Mean Score491
12
RunURLB Quadruped 1.0 (test)
Mean Score325
12
StandURLB Quadruped 1.0 (test)
Mean Score662
12
Unsupervised Reinforcement LearningURL Benchmark Jaco
Reach Bottom Left1
12
Reinforcement LearningQuadruped URLB (downstream)
Jump Score555
12
Unsupervised Reinforcement LearningURL Benchmark Quadruped
Jump Score136
12
WalkURLB Quadruped 1.0 (test)
Mean Score273
12
Reinforcement LearningJaco URLB (downstream)
Reach Count BL20
12
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