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Mutual Alignment Transfer Learning

About

Training robots for operation in the real world is a complex, time consuming and potentially expensive task. Despite significant success of reinforcement learning in games and simulations, research in real robot applications has not been able to match similar progress. While sample complexity can be reduced by training policies in simulation, such policies can perform sub-optimally on the real platform given imperfect calibration of model dynamics. We present an approach -- supplemental to fine tuning on the real robot -- to further benefit from parallel access to a simulator during training and reduce sample requirements on the real robot. The developed approach harnesses auxiliary rewards to guide the exploration for the real world agent based on the proficiency of the agent in simulation and vice versa. In this context, we demonstrate empirically that the reciprocal alignment for both agents provides further benefit as the agent in simulation can adjust to optimize its behaviour for states commonly visited by the real-world agent.

Markus Wulfmeier, Ingmar Posner, Pieter Abbeel• 2017

Related benchmarks

TaskDatasetResultRank
Off-dynamics Reinforcement LearningReacher broken source environment MuJoCo
Average Reward30
7
Reinforcement LearningMuJoCo Reacher 1.5 density v1 (test)
Reward-11.1
7
Reinforcement LearningWalker2d 1.5 gravity MuJoCo
Reward1.42e+3
7
Reinforcement LearningMuJoCo Walker2d 1.5 density v1 (test)
Reward1.50e+3
7
Reinforcement LearningWalker2d 0.5 gravity (test)
Average Return767
7
Reinforcement LearningMuJoCo Ant 1.5 density v1 (test)
Reward3.14e+3
7
Off-dynamics Reinforcement LearningHalfCheetah 0.5 density v1 (test)
Reward2.68e+3
7
Off-dynamics Reinforcement LearningReacher 0.5 density v1 (test)
Reward-13.2
7
Reinforcement LearningAnt 0.5 gravity (test)
Average Return980
7
Reinforcement LearningReacher 0.5 gravity (test)
Average Return-13.6
7
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