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Value Function Approximation on Non-Linear Manifolds for Robot Motor Control

Masashi Sugiyama, Hirotaka Hachiya, Christopher Towell, Sethu Vijayakumar

Year
2007
Citations
15

Abstract

The least squares approach works efficiently in value function approximation, given appropriate basis functions. Because of its smoothness, the Gaussian kernel is a popular and useful choice as a basis function. However, it does not allow for discontinuity which typically arises in real-world reinforcement learning tasks. In this paper, we propose a new basis function based on geodesic Gaussian kernels, which exploits the non-linear manifold structure induced by the Markov decision processes. The usefulness of the proposed method is successfully demonstrated in a simulated robot arm control and Khepera robot navigation.

Keywords

Basis functionSmoothnessComputer scienceGeodesicBasis (linear algebra)Mobile robotRobotBellman equationMarkov decision processKernel (algebra)

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