Title :
SVM Viability Controller Active Learning: Application to Bike Control
Author :
Chapel, Laetitia ; Deffuant, Guillaume
Author_Institution :
Cemagref LISC, Aubiere
Abstract :
It was shown recently that SVMs are particularly adequate to define action policies to keep a dynamical system inside a given constraint set (in the framework of viability theory). However, the training set of the SVMs face the dimensionality curse, because it is based on a regular grid of the state space. In this paper, we propose an active learning approach, aiming at decreasing dramatically the training set size, keeping it as close as possible to the final number of support vectors. We use a virtual multi-resolution grid, and some particularities of the problem, to choose very efficient examples to add to the training set. To illustrate the performances of the algorithm, we solve a six-dimensional problem, controlling a bike on a track, problem usually solved using reinforcement learning techniques.
Keywords :
intelligent control; learning (artificial intelligence); motorcycles; support vector machines; SVM viability controller active learning; bike control; constraint set; dynamical system; reinforcement learning; viability theory; virtual multiresolution grid; Bicycles; Costs; Environmental factors; Grid computing; Kernel; Labeling; Learning; State-space methods; Support vector machine classification; Support vector machines;
Conference_Titel :
Approximate Dynamic Programming and Reinforcement Learning, 2007. ADPRL 2007. IEEE International Symposium on
Conference_Location :
Honolulu, HI
Print_ISBN :
1-4244-0706-0
DOI :
10.1109/ADPRL.2007.368188