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Feature Selection Based on Genetic Algorithm for Classification of Pre-miRNAs

机译:基于遗传算法的特征选择,用于pre-miRNA的分类

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Precursor miRNAs (pre-miRNAs) are usually extracted to obtain quite a lot of global and intrinsic folding features that include some redundant and useless features. Therefore,it is essential to select the most representative feature subset,which contributes to improve the classification efficiency.We propose a novel feature selection method based on genetic algorithm.The information gain of feature and the redundancy among features are considered in this algorithm.Compared with microPred,the total accuracy of classifier miPredGA which is constructed with our selected features is improved nearly 12%.Our selected feature subset also could be used to train the classifier based on ab initio method,which is beneficial to construct efficient classifier used to classify real pre-miRNAs and pseudo hairpin sequences.
机译:通常先提取前体miRNA(pre-miRNA),以获得大量的全局和固有折叠特征,其中包括一些多余和无用的特征。因此,选择最有代表性的特征子集是必不可少的,这有助于提高分类效率。本文提出了一种基于遗传算法的特征选择方法,该算法考虑了特征的信息增益和特征之间的冗余性。使用microPred,我们选择的特征构造的分类器miPredGA的总准确性提高了近12%。我们选择的特征子集还可以用于从头算的方法来训练分类器,这有利于构造用于分类的高效分类器真正的pre-miRNA和伪发夹序列。

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