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Value Function Approximation with Diffusion Wavelets and Laplacian Eigenfunctions

Conference Paper Artificial Intelligence · Machine Learning

Abstract

We investigate the problem of automatically constructing efficient rep- resentations or basis functions for approximating value functions based on analyzing the structure and topology of the state space. In particu- lar, two novel approaches to value function approximation are explored based on automatically constructing basis functions on state spaces that can be represented as graphs or manifolds: one approach uses the eigen- functions of the Laplacian, in effect performing a global Fourier analysis on the graph; the second approach is based on diffusion wavelets, which generalize classical wavelets to graphs using multiscale dilations induced by powers of a diffusion operator or random walk on the graph. Together, these approaches form the foundation of a new generation of methods for solving large Markov decision processes, in which the underlying repre- sentation and policies are simultaneously learned.

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Context

Venue
Annual Conference on Neural Information Processing Systems
Archive span
1987-2025
Indexed papers
30776
Paper id
610143087725400266