Emergence of Locomotion Behaviours in Rich Environments
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Abstract
The reinforcement learning paradigm allows, in principle, for complex behaviours to be learned directly from simple reward signals. In practice, however, it is common to carefully hand-design the reward function to encourage a particular solution, or to derive it from demonstration data. In this paper explore how a rich environment can help to promote the learning of complex behavior. Specifically, we train agents in diverse environmental contexts, and find that this encourages the emergence of robust behaviours that perform well across a suite of tasks. We demonstrate this principle for locomotion -- behaviours that are known for their sensitivity to the choice of reward. We train several simulated bodies on…
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Keywords
- Reinforcement learning
- Computer science
- Simple (philosophy)
- Set (abstract data type)
- Suite
- Function (biology)
- Terrain
- Scalability
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