Sciweavers

IJBRA
2007

On predicting secondary structure transition

13 years 4 months ago
On predicting secondary structure transition
A function of a protein is dependent on its structure; therefore, predicting a protein structure from an amino acid sequence is an active area of research. Optimally predicting a structure from a sequence is NP-hard problem, hence several sub-optimal algorithms with heuristics have been used to solve the problem. When a structure is predicted by an approximate algorithm, it must be validated and such validation invariably involves validating the secondary structure using the predicted locations of all the residues. To improve the accuracy of validation of secondary accuracy, we are studying the predictability of secondary structure transitions using the following machine learning algorithms: naïve Bayes, C4.5 decision tree, and random forest. The outcome of any machine-learning algorithm depends on the quality of the training set; hence it must be free from any errors or noise. Absolute error free training data set is not possible to construct, but we have created a data set by filte...
Raja Loganantharaj, Vivek Philip
Added 14 Dec 2010
Updated 14 Dec 2010
Type Journal
Year 2007
Where IJBRA
Authors Raja Loganantharaj, Vivek Philip
Comments (0)