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A Bootstrap-based Linear Classifier Fusion System for Protein Subcellular Location Prediction

机译:基于引导基于蛋白质亚细胞位置预测的线性分类器融合系统

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The subcellular location plays a pivotal role in the functionality of proteins. In this paper we develop a multi-stage linear classifier fusion system based on Efron's bootstrap sampling for predicting subcellular locations of yeast proteins. Three different types of classifiers, i.e. the Naive Bayes (NB) classifier, Radial Basis Function (RBF) network, and Multilayer Perceptron (MLP), are utilized to construct the component modules in the fusion system. Ten bootstrapped instance sets are generated for training each type of component classifiers respectively. The linear fusion models, updated by the Least-Mean-Square (LMS) algorithm, are used to integrate the local decisions of the component classifiers and derive the final predictions. The empirical results show that the RBF classifiers can reach at slightly higher accuracy and better precision versus the NB or MLP ones. The linear fusion system consistently improves the overall prediction accuracy, in particular 6.65%, 1.77%, and 3.21%, superior to the NB, RBF, and MLP component classifiers, respectively.
机译:亚细胞位置在蛋白质的功能中起着枢转作用。在本文中,我们开发了一种基于efron举射抽样的多级线性分类器融合系统,用于预测酵母蛋白的亚细胞位置。三种不同类型的分类器,即天真贝叶斯(NB)分类器,径向基函数(RBF)网络和多层的Perceptron(MLP),用于构建融合系统中的组件模块。生成10个引导实例集以分别用于培训每种类型的组件分类器。由最小均值(LMS)算法更新的线性融合模型用于集成组件分类器的本地决策并导出最终预测。经验结果表明,RBF分类器可以以略高的准确度和更好的精度达到NB或MLP。线性融合系统分别始终如一地提高了总预测精度,特别是6.65%,1.77%和3.21%,分别优于Nb,RBF和MLP成分分类剂。

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