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APS: Active Pretraining with Successor Features

About

We introduce a new unsupervised pretraining objective for reinforcement learning. During the unsupervised reward-free pretraining phase, the agent maximizes mutual information between tasks and states induced by the policy. Our key contribution is a novel lower bound of this intractable quantity. We show that by reinterpreting and combining variational successor features~\citep{Hansen2020Fast} with nonparametric entropy maximization~\citep{liu2021behavior}, the intractable mutual information can be efficiently optimized. The proposed method Active Pretraining with Successor Feature (APS) explores the environment via nonparametric entropy maximization, and the explored data can be efficiently leveraged to learn behavior by variational successor features. APS addresses the limitations of existing mutual information maximization based and entropy maximization based unsupervised RL, and combines the best of both worlds. When evaluated on the Atari 100k data-efficiency benchmark, our approach significantly outperforms previous methods combining unsupervised pretraining with task-specific finetuning.

Hao Liu, Pieter Abbeel• 2021

Related benchmarks

TaskDatasetResultRank
Bottom LeftURLB Jaco 1.0 (test)
Mean Score61
12
Bottom RightURLB Jaco 1.0 (test)
Mean Score79
12
FlipURLB Walker 1.0 (test)
Mean Score355
12
StandURLB Walker 1.0 (test)
Mean Score667
12
Unsupervised Reinforcement LearningURL Benchmark (Walker)
Flip Score35
12
Unsupervised Reinforcement LearningURL Benchmark Quadruped
Jump Score134
12
Unsupervised Reinforcement LearningURL Benchmark Jaco
Reach Bottom Left0.00e+0
12
WalkURLB Walker 1.0 (test)
Mean Score500
12
JumpURLB Quadruped 1.0 (test)
Mean Score283
12
RunURLB Walker 1.0 (test)
Mean Score166
12
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