Title :
Supervised training of adaptive systems with partially labeled data
Author :
Erdogmus, Deniz ; Rao, Yadunandana N. ; Principe, Jose C.
Author_Institution :
Oregon Graduate Inst., Oregon Health Sci. Univ., Portland, OR, USA
Abstract :
Supervised adaptive system training is traditionally performed with available pairs of input-output data and the system weights are fixed following this training procedure. Recently, in the context of machine learning, where the desired outputs are discrete-valued, the idea of exploiting unlabeled samples for improving classification performance has been proposed. We introduce an information theoretic framework based on density divergence minimization to obtain extended training algorithms. Our goal is to provide a theoretical framework upon which we can build efficient algorithms to this end.
Keywords :
adaptive systems; information theory; learning (artificial intelligence); pattern classification; signal classification; statistical analysis; adaptive system training; classification performance; density divergence minimization; discrete-valued outputs; extended training algorithms; information theoretic framework; machine learning; partially labeled data; statistical approaches; supervised training; system weights; unlabeled samples; Adaptive systems; Function approximation; Laboratories; Machine learning; Machine learning algorithms; Minimization methods; Neural engineering; Pattern recognition; Supervised learning; System identification;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 2005. Proceedings. (ICASSP '05). IEEE International Conference on
Print_ISBN :
0-7803-8874-7
DOI :
10.1109/ICASSP.2005.1416305