IMPROVING THE PERFORMANCE OF Q-LEARNING WITH LOCALLY WEIGHTED REGRESSION
Halim Aljibury
- 发表年份
- 2001
- 引用次数
- 2
摘要
Oftentimes, the problem faced by researchers applying reinforcement learning to a nontrivial robotics problem is that they run head-on into the curse of dimensionality. This is a particular problem for those researchers using discrete-state algorithms, as the number of states exponentially increase with the complexity of the problem. This thesis provides a method by which the performance of a discrete-state algorithm can be improved when applied to a continuous-state problem in combination with a function approximator. The method consists of two steps. The first step consists of learning the value function over a small number of discrete states. The second step involves using the function approximator to generalize from those discrete states to a continuous state space.
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