Policy-gradient learning for motor control
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Date
2005
Authors
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Publisher
Te Herenga Waka—Victoria University of Wellington
Abstract
Until recently it was widely considered that value function-based reinforcement learning methods were the only feasible way of solving general stochastic optimal control problems. Unfortunately, these approaches are inapplicable to real-world problems with continuous, high-dimensional and partially-observable properties such as motor control tasks.
While policy-gradient reinforcement learning methods suggest a suitable approach to such tasks, they suffer from typical parametric learning issues such as model selection and catastrophic forgetting. This thesis investigates the application of policy-gradient learning to a range of simulated motor learning tasks and introduces the use of local factored policies to enable incremental learning in tasks of unknown complexity.
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Keywords
Machine learning, Algorithms, Computer algorithms, Motor learning, Reinforcement learning, Stochastic control theory