Title :
Autonomous mental development in high dimensional state and action spaces
Author :
Joshi, Ameet ; Weng, Juyang
Author_Institution :
Dept. of Comput. Sci. & Eng., Michigan State Univ., USA
Abstract :
Autonomous mental development (AMD) of robots opened a new paradigm for developing machine intelligence, using neural network type of techniques and it fundamentally changed the way an intelligent machine is developed from manual to autonomous. The work presented is a part of SAIL (self-organizing autonomous incremental learner) project which deals with autonomous development of entire humanoid robot with vision, audition, manipulation and locomotion. The major issue addressed is the challenge of high dimensional action space (5 to 10) in addition to the high dimensional context state space (hundreds to thousands and beyond), typically required by an AMD machine. This is the first work that studies a high dimensional (numeric) action space in conjunction with a high dimensional perception (context state) space, under the AMID mode. Two new learning algorithms, Direct Update on Direction Cosines (DUDC) and High-Dimensional Conjugate Gradient Search (HCGS), are developed, implemented and tested. The convergence properties of both the algorithms and their targeted applications are discussed. Autonomous learning of speech production under reinforcement learning is studied as an example.
Keywords :
humanoid robots; intelligent robots; learning (artificial intelligence); neural nets; Direct Update on Direction Cosines; High-Dimensional Conjugate Gradient Search; autonomous mental development; high dimensional action space; high dimensional action spaces; high dimensional context state space; high dimensional perception; high dimensional state spaces; humanoid robot; learning algorithms; machine intelligence; reinforcement learning; robot mental development; self organizing autonomous incremental learner project; speech production; Autonomous mental development; Humanoid robots; Intelligent networks; Intelligent robots; Learning systems; Machine intelligence; Manuals; Neural networks; Orbital robotics; State-space methods;
Conference_Titel :
Neural Networks, 2003. Proceedings of the International Joint Conference on
Print_ISBN :
0-7803-7898-9
DOI :
10.1109/IJCNN.2003.1224036