A Survey on Gene Prediction Using Neural Network

  IJCOT-book-cover
 
International Journal of Computer & Organization Trends  (IJCOT)          
 
© 2013 by IJCOT Journal
Volume-3 Issue-2                          
Year of Publication : 2013
Authors :   S. Lakshmi, A. Shahin

Citation

S. Lakshmi, A. Shahin.   "A Survey on Gene Prediction Using Neural Network"International Journal of Computer & organization Trends  (IJCOT), V3(2):14-19 Mar - Apr 2013, ISSN:2249-2593, www.ijcotjournal.org. Published by Seventh Sense Research Group.

Abstract

Neural network is traditionally used to refer to a network or circuit of Gene in the research traditionally. Despite a high number of techniques specifically dedicated to networks problems as well as many successful applications, we are in the initiation process to massively integrate the aspects and experiences in the different core subjects such as medicine, computer science, engineering and mathematics. Currently, a large number of gene identification tools are based on computational intelligence approaches. Here, we have revealed the existing conventional as well as computational methods to classify genes and various gene predictors are compared. My paper includes some drawbacks of the presently available methods and also, the feasibl e instructions for future directions are discussed.

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Keywords

DNA, Gene, Artificial Neural Networks, SVM, etc.