We consider the problem of approximating the cost-to-go functions in reinforcement learning. By mapping the state implicitly into a feature space, we perform a simple algorithm in the feature space, which corresponds to a complex algorithm in the original state space. Two kernel-based reinforcement learning algorithms, the ε-insensitive kernel based reinforcement learning (ε KRL) and the least squares kernel based reinforcement learning (LS-KRL) are proposed. An example shows that the proposed methods can deal effectively with the reinforcement learning problem without having to explore many states. © Springer-Verlag Berlin Heidelberg 2006.
CITATION STYLE
Clark, S. (2003). Transportation and network analysis: Current trends. Journal of the Operational Research Society (Vol. 54, pp. 1305–1306). Retrieved from https://link.springer.com/content/pdf/10.1007%2F978-1-4757-6871-8.pdf
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