Hardware efficient learning on a 3-D optoelectronic neural system

Autor: Gary C. Marsden, J. Merckle, Stephen A. Brodsky, Matthias Blume, Sadik C. Esener, Clark C. Guest, Gökçe I. Yayla, Ashok V. Krishnamoorthy
Rok vydání: 2002
Předmět:
Zdroj: Proceedings of 1994 IEEE International Conference on Neural Networks (ICNN'94).
DOI: 10.1109/icnn.1994.374468
Popis: Discusses the dual-scale topology optoelectronic processor (D-STOP) neural network, a scalable, optically interconnected neural network architecture. The authors present the tandem D-STOP system, which provides the connectivity needed for building fully-parallel neural networks with generic gradient-descent learning rules. The authors review the content addressable network (CAN) learning algorithm, a discrete learning algorithm that provides accelerated learning with reduced hardware requirements. The authors then show how the CAN algorithm can be effectively mapped onto D-STOP, and they investigate associated optoelectronic hardware tradeoffs. >
Databáze: OpenAIRE