DocumentCode :
487583
Title :
On the State Space of the Binary Neural Network
Author :
Kam, Moshe ; Cheng, Roger ; Guez, Allon
Author_Institution :
Department of Electrical and Computer Engineering, Drexel University, Philadelphia PA 19104
fYear :
1988
fDate :
15-17 June 1988
Firstpage :
2276
Lastpage :
2281
Abstract :
Analysis of the state space for the fully-connected binary neural network ("the Hopfield model") remains an important objective in utilizing the network in pattern recognition and associative information retrieval. Most of the research pertaining to the network\´s state space so far concentrated on stable-state enumeration and often it was assumed that the patterns which are to be stored are random. We discuss the case of deterministic known codewords whose storage is required, and show that for this important case bounds on the retrieval probabilities and convergence rates can be achieved. The main tool which we employ is Birth-and-Death Markov chains, describing the Hamming distance of the network\´s state from the stored patterns. The results are applicable to both the asynchronous network and to the Boltzmann machine, and can be utilized to compare codeword sets in terms of efficiency of their retrieval, when the neural network is used as a content addressable memory.
Keywords :
Content based retrieval; Convergence; Hamming distance; Hopfield neural networks; Information analysis; Information retrieval; Neural networks; Pattern analysis; Pattern recognition; State-space methods;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
American Control Conference, 1988
Conference_Location :
Atlanta, Ga, USA
Type :
conf
Filename :
4790104
Link To Document :
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