File Entry: Predicting Protein Secondary Structure with Neural Network and Dempster-Shafer Theory
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Title | Predicting Protein Secondary Structure with Neural Network and Dempster-Shafer Theory |
File name | Satya_N._V._Arjunan_Safaai_Deris_Rosli_Md_Illias_Mohd_Saberi_Mohamad_Azmee_Awang2003-Predicting_Protein_Secondary_Struct.pdf |
File size | 25373 |
SHA1 | f7356fcd9c0b0cf319ba06968abb391f14b9e344 |
Content type | Adobe PDF |
Description
Protein secondary structure prediction has benefited largely from the improvements in machine learning techniques. A novel neural network classifier based on the Dempster-Shafer theory has been introduced by Denoeux. It demonstrated favourable performance in some artificial and real world problems when compared against methods such as Support Vector Machines and Kernel Fisher Discriminants. However, it has not been used for protein secondary structure prediction. In this work, we examined the applicability of this technique in secondary structure prediction. We have identified two main drawbacks of this network in predicting secondary structure; the first being its high computational demand when training on large data sets. We alleviated the computational requirements by implementing the training procedure using the data parallel approach in a distributed and shared memory parallel computing environment. Secondly, the Euclidean distance measure used in the neural network is impaired as a result of the high dimensionality of the data. By replacing the distance measure with Multilayer Perceptrons, we are able to improve the classification accuracy. Moreover, at the level of sequence-to-structure prediction, its performance was comparable to the PHD (Profile network from Heidelberg) method, which is one of the best secondary structure prediction schemes.
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