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ICAI
2009

On the Construction of Initial Basis Function for Efficient Value Function Approximation

13 years 10 months ago
On the Construction of Initial Basis Function for Efficient Value Function Approximation
- We address the issues of improving the feature generation methods for the value-function approximation and the state space approximation. We focus the improvement of feature generation methods on approaches based on the Bellman error. The original Bellman-error-based approaches construct the first basis function as an arbitrary nonzero vector. This kind of design results an inefficient generation of the basis functions. We propose a method to construct the first basis function that models the structure of the value-function. Our method improves the efficiency of existing feature generation algorithms and derives a more precise model for value-function approximation. We also propose to use the relevance vector machine to find a sparse state representation and project the original high-dimensional state space to the resulting low-dimensional state space. Our framework shows improved performance on existing benchmark problems, and is also effective on a car racing problem.
Chung-Cheng Chiu, Kuan-Ta Chen
Added 18 Feb 2011
Updated 18 Feb 2011
Type Journal
Year 2009
Where ICAI
Authors Chung-Cheng Chiu, Kuan-Ta Chen
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