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首页> 外文期刊>International journal of computational vision and robotics >An enhanced classifier fusion model for classifying biomedical data
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An enhanced classifier fusion model for classifying biomedical data

机译:用于生物医学数据分类的增强分类器融合模型

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摘要

Classification is a technique where we discover the hidden class level of the unknown data. As different classification methods produces different accuracy according to the class level; classifier fusion is the solution to achieve more accuracy in every level of the input data. Selection of a suitable classifier in classifier fusion is a tedious task. In the proposed model, the output of the three classifiers is fed to the dynamic classifier fusion technique. This model will use each classifier for every individual data. We have used principal component analysis (PCA) to deal with issues of high dimensionality in biomedical classification. Three types of classification techniques on microarray data like multi layer perceptron (MLP), FLANN and PSO-FLANN have been implemented and compared; it has been observed that MLP is showing better result. We have also proposed a model for classifier fusion, where the model will choose the relevant classifiers according to the different region of datasets.
机译:分类是一种发现未知数据的隐藏类级别的技术。由于不同的分类方法会根据课程级别产生不同的准确性;分类器融合是在输入数据的每个级别上实现更高准确性的解决方案。在分类器融合中选择合适的分类器是一项繁琐的任务。在提出的模型中,三个分类器的输出被馈送到动态分类器融合技术。该模型将对每个单独的数据使用每个分类器。我们已经使用主成分分析(PCA)来处理生物医学分类中的高维问题。已经实现并比较了针对微阵列数据的三种类型的分类技术,例如多层感知器(MLP),FLANN和PSO-FLANN。已经观察到,MLP显示出更好的结果。我们还提出了分类器融合模型,该模型将根据数据集的不同区域选择相关的分类器。

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