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Using recurrent neural networks to predict aspects of 3-D structure of folded copolymer sequences

Authors :
Reilly, R. G.
Kechadi, M. -T.
Kuznetsov, Yu. A.
Timoshenko, E. G.
Dawson, K. A.
Source :
Il Nuovo Cimento D, 20 (12bis), pp. 2565-2574 (1998).ISSN 0392-6737
Publication Year :
2024

Abstract

The neural network techniques are developed for artificial sequences based on approximate models of proteins. We only encode the hydrophobicity of the amino acid side chains without attempting to model the secondary structure. We use our approach to obtain a large set of sequences with known 3-D structures for training the neural network. By employing recurrent neural networks we describe a way to augment a neural network to deal with sequences of realistic length and long-distant interactions between the sequence regions.<br />Comment: 10 pages, 4 postscript figures

Details

Database :
arXiv
Journal :
Il Nuovo Cimento D, 20 (12bis), pp. 2565-2574 (1998).ISSN 0392-6737
Publication Type :
Report
Accession number :
edsarx.2407.11493
Document Type :
Working Paper