Title :
Fast and efficient incremental learning for high-dimensional movement systems
Author :
Vijayakumar, Sethu ; Schaal, Stefan
Author_Institution :
Univ. of Southern California, Los Angeles, CA, USA
Abstract :
We introduce a new algorithm, locally weighted projection regression (LWPR), for incremental real-time learning of nonlinear functions, as particularly useful for problems of autonomous real-time robot control that requires internal models of dynamics, kinematics, or other functions. At its core, LWPR uses locally linear models, spanned by a small number of univariate regressions in selected directions in input space, to achieve piecewise linear function approximation. The outstanding properties of LWPR are that it i) learns rapidly with second order learning methods based on incremental training, ii) uses statistically sound stochastic cross validation to learn iii) adjusts its local weighting kernels based on only local information to avoid interference problems, iv) has a computational complexity that is linear in the number of inputs, and v) can deal with a large number of possibly redundant and/or irrelevant inputs, as shown in evaluations with up to 50 dimensional data sets for learning the inverse dynamics of an anthropomorphic robot arm. To our knowledge, this is the first incremental neural network learning method to combine all these properties and that is well suited for complex online learning problems in robotics
Keywords :
computational complexity; learning (artificial intelligence); multidimensional systems; piecewise linear techniques; real-time systems; redundancy; robots; statistical analysis; LWPR; anthropomorphic robot arm; autonomous real-time robot control; complex online learning problems; computational complexity; dynamic models; fast efficient incremental learning; high-dimensional movement systems; incremental real-time learning; incremental training; interference problems; internal models; inverse dynamics learning; kinematic models; local weighting kernels; locally linear models; locally weighted projection regression; nonlinear functions; piecewise linear function approximation; redundant inputs; second-order learning methods; statistically sound stochastic cross validation; univariate regressions; Anthropomorphism; Computational complexity; Function approximation; Interference; Kernel; Kinematics; Learning systems; Piecewise linear techniques; Robot control; Stochastic processes;
Conference_Titel :
Robotics and Automation, 2000. Proceedings. ICRA '00. IEEE International Conference on
Conference_Location :
San Francisco, CA
Print_ISBN :
0-7803-5886-4
DOI :
10.1109/ROBOT.2000.844871