A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predicting the secondary structure of proteins. The results are compared with those obtained with Neural Networks (NN) trained with the back-propagation algorithm (BPNN) and generated with genetic algorithms. CCLA proceeds towards rite global minimum of the error function more efficiently than BPNN. However; only a slight improvement in the average efficiency value is noticeable (61.82% as compared with 61.61% obtained with BPNN). The values of the three correlation coefficients for the discriminated secondary structures are also rather similar (C-alpha, and C-beta and C-coil are 0.36, 0.29 and 0.36 with CCLA, and 0.36, 0.31 and 0.35 with BPNN). T...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...
In this work we describe a parallel system consisting of feed-forward neural networks supervised by ...
Protein structure prediction is very vital to innovative process of discovering new medications base...
Summary: The back-propagation neural network algorithm is a commonly used method for predicting the ...
A statical algorithm for protein secondary structure prediction, using a specifically adapted neural...
Neural networks have conventionally been used to predict protein secondary structure. However, they ...
ABSTRACT The paper proposes a neural network based approach to predict secondary structure of prote...
Abstract — Proteins, one of the basic building blocks of all the organisms, need exploratory techniq...
Back-propagation, feed-forward neural networks are used to predict the secondary structures of membr...
This project applied artificial neural networks to the field of secondary structure prediction of pr...
A method for protein secondary structure prediction based on the use of artificial neural networks (...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
Protein secondary structure prediction remains a vital topic with broad applications. Due to lack of...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...
In this work we describe a parallel system consisting of feed-forward neural networks supervised by ...
Protein structure prediction is very vital to innovative process of discovering new medications base...
Summary: The back-propagation neural network algorithm is a commonly used method for predicting the ...
A statical algorithm for protein secondary structure prediction, using a specifically adapted neural...
Neural networks have conventionally been used to predict protein secondary structure. However, they ...
ABSTRACT The paper proposes a neural network based approach to predict secondary structure of prote...
Abstract — Proteins, one of the basic building blocks of all the organisms, need exploratory techniq...
Back-propagation, feed-forward neural networks are used to predict the secondary structures of membr...
This project applied artificial neural networks to the field of secondary structure prediction of pr...
A method for protein secondary structure prediction based on the use of artificial neural networks (...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
Protein secondary structure prediction remains a vital topic with broad applications. Due to lack of...
Using neural networks to predict the structure of proteins from amino acid sequences is a very commo...
In this work we describe a parallel system consisting of feed-forward neural networks supervised by ...
Protein structure prediction is very vital to innovative process of discovering new medications base...