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Multi-task Learning for Continuous Control

Himani Arora, Rajath Kumar, Jason Krone, Chong Li

Year
2018
Citations
11
Access
Open access

Abstract

Reliable and effective multi-task learning is a prerequisite for the development of robotic agents that can quickly learn to accomplish related, everyday tasks. However, in the reinforcement learning domain, multi-task learning has not exhibited the same level of success as in other domains, such as computer vision. In addition, most reinforcement learning research on multi-task learning has been focused on discrete action spaces, which are not used for robotic control in the real-world. In this work, we apply multi-task learning methods to continuous action spaces and benchmark their performance on a series of simulated continuous control tasks. Most notably, we show that multi-task learning outperforms our baselines and alternative knowledge sharing methods.

Keywords

Reinforcement learningTask (project management)Computer scienceMulti-task learningArtificial intelligenceBenchmark (surveying)Control (management)Robot learningAction (physics)Domain (mathematical analysis)

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