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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Principal Composite Kernel Feature Analysis: Data-Dependent Kernel Approach
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Principal Composite Kernel Feature Analysis: Data-Dependent Kernel Approach

机译:主要的复合内核特征分析:数据相关的内核方法

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摘要

Principal composite kernel feature analysis (PC-KFA) is presented to show kernel adaptations for nonlinear features of medical image data sets (MIDS) in computer-aided diagnosis (CAD). The proposed algorithm PC-KFA has extended the existing studies on kernel feature analysis (KFA), which extracts salient features from a sample of unclassified patterns by use of a kernel method. The principal composite process for PC-KFA herein has been applied to kernel principal component analysis [34] and to our previously developed accelerated kernel feature analysis [20]. Unlike other kernel-based feature selection algorithms, PC-KFA iteratively constructs a linear subspace of a high-dimensional feature space by maximizing a variance condition for the nonlinearly transformed samples, which we call data-dependent kernel approach. The resulting kernel subspace can be first chosen by principal component analysis, and then be processed for composite kernel subspace through the efficient combination representations used for further reconstruction and classification. Numerical experiments based on several MID feature spaces of cancer CAD data have shown that PC-KFA generates efficient and an effective feature representation, and has yielded a better classification performance for the proposed composite kernel subspace using a simple pattern classifier.
机译:提出了主要的复合核特征分析(PC-KFA),以显示核对计算机辅助诊断(CAD)中医学图像数据集(MIDS)非线性特征的适应性。所提出的算法PC-KFA扩展了对内核特征分析(KFA)的现有研究,该算法使用内核方法从未分类模式的样本中提取显着特征。本文中PC-KFA的主要合成过程已应用于内核主成分分析[34]和我们先前开发的加速内核特征分析[20]。与其他基于内核的特征选择算法不同,PC-KFA通过最大化非线性变换样本的方差条件来迭代构造高维特征空间的线性子空间,我们将其称为数据相关的内核方法。可以首先通过主成分分析选择生成的内核子空间,然后通过用于进一步重构和分类的有效组合表示来对复合内核子空间进行处理。基于癌症CAD数据的多个MID特征空间的数值实验表明,PC-KFA可生成有效的有效特征表示,并使用简单的模式分类器为拟议的复合核子空间提供了更好的分类性能。

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