ABSTRACT The paper proposes a neural network based approach to predict secondary structure of protein. It uses Multilayer Feed Forward Network (MLFN) with resilient back propagation as the learning algorithm. Point Accepted Mutation (PAM) is adopted as the encoding scheme and CB396 data set is used for the training and testing of the network. Overall accuracy of the network has been experimentally calculated with different window sizes for the sliding window scheme and by varying the number of units in the hidden layer. The best results were obtained with eleven as the window size and seven as the number of units in the hidden layer
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
Abstract — Neural network is one of the successful methods for protein secondary structure predictio...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
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...
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...
To solve the complicated non-linear mode-sorting problem of protein secondary structure prediction, ...
Back-propagation, feed-forward neural networks are used to predict the secondary structures of membr...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
Protein structure prediction is very vital to innovative process of discovering new medications base...
A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predi...
Neural networks have conventionally been used to predict protein secondary structure. However, they ...
Artificial Neural Networks usually provide better approaches to problems than they request: pattern ...
We present an integrated Grid system for the prediction of protein secondary structures, based on th...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
Abstract — Neural network is one of the successful methods for protein secondary structure predictio...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
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...
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...
To solve the complicated non-linear mode-sorting problem of protein secondary structure prediction, ...
Back-propagation, feed-forward neural networks are used to predict the secondary structures of membr...
211 p.This thesis is focused on protein secondary structure (PSS) prediction which is one of the mos...
Protein structure prediction is very vital to innovative process of discovering new medications base...
A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predi...
Neural networks have conventionally been used to predict protein secondary structure. However, they ...
Artificial Neural Networks usually provide better approaches to problems than they request: pattern ...
We present an integrated Grid system for the prediction of protein secondary structures, based on th...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...
Abstract — Neural network is one of the successful methods for protein secondary structure predictio...
Protein is considered the backbone of any human being. Protein is responsible for many functionaliti...