Performance issues in genetic Information retrieval
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Abstract
Information retrieval IR systems are responsible for retrieval of large
newlineamounts of data in an efficient manner The information retrieval task deals with
newlineretrieving data stored within the repositories in response to a user s information
newlineneeds For this type of retrieval system a performance system is necessary This
newlineresearch explores the data mining techniques in order to identify the one that will
newlineoffer the best performance in application to bioinformatics that will respond to
newlinegenetic information Data mining has been exploited to retrieve the valuable
newlineinformation in a wide spread fields especially in DNA microarray technology
newlineThe DNA microarray technology produces a huge amount of gene data
newlineexpression levels of thousands of genes for a very few samples
newlineInitially performance issues for information retrieval in the field of
newlinemicroarray gene data are analyzed The information retrieval metrics like accuracy
newlinesensitivity specificity are to be increased and error rate is to be reduced As a first
newlineprocess in gene classification the high dimensionality of the microarray gene data
newlineis reduced using LPP The LPP is chosen for the dimensionality reduction because
newlineof its ability of preserving locality of neighborhood relationship Secondly SVM
newlinehas been trained for effectual gene classification SVM has the ability to learn with
newlinevery few samples and so it is selected SVM ensemble was utilized for the
newlineclassification process in order to classify more than a single class
newline