DocumentCode :
3255392
Title :
Generalization of protein structure from sequence using a large scale backpropagation network
Author :
Wilcox, G.L. ; Poliac, M.O.
Author_Institution :
Minnesota Supercomput. Inst., Minneapolis, MN, USA
fYear :
1989
fDate :
0-0 1989
Abstract :
Summary form only given. The authors have applied a simple back propagation neural network on a very large scale in an attempt to associate many primary sequences with representations of the corresponding three-dimensional structures. The training set consisted of 25 five sequences (the input layer, 130 amino acids long) associated with 25 130*130 distance matrices (the output layer, 16900 neurons). Each amino acid was coded according to its hydrophobicity (range +or-1; the degree to which it avoids contact with water), and the Euclidean distances in the distance matrices were normalized to the largest distance in the training set (range 0-1; about 40 A). The network was configured with a single fully connected hidden layer of 50 to 1000 neurons using the network description language (NDL, also called BigNet). The network simulation was run on a Cray 2 supercomputer with four processors and 512 million words of random access memory. The network achieved rates of two million connections per second in full backpropagation learning mode and was able to learn some aspects of sequence-to-structure mapping.<>
Keywords :
biology computing; neural nets; BigNet; Cray 2 supercomputer; Euclidean distances; NDL; amino acids; back propagation neural network; backpropagation learning mode; corresponding three-dimensional structures; distance matrices; hydrophobicity; large scale backpropagation network; network description language; network simulation; neurons; primary sequences; random access memory; sequence-to-structure mapping; single fully connected hidden layer; training set; Biomedical computing; Neural networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1989. IJCNN., International Joint Conference on
Conference_Location :
Washington, DC, USA
Type :
conf
DOI :
10.1109/IJCNN.1989.118437
Filename :
118437
Link To Document :
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