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Principal Composite Kernel Feature Analysis: Data-Dependent Kernel Approach

Published: 01 August 2013 Publication History

Abstract

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.

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  1. Principal Composite Kernel Feature Analysis: Data-Dependent Kernel Approach

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    Published In

    cover image IEEE Transactions on Knowledge and Data Engineering
    IEEE Transactions on Knowledge and Data Engineering  Volume 25, Issue 8
    August 2013
    241 pages

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    IEEE Educational Activities Department

    United States

    Publication History

    Published: 01 August 2013

    Author Tags

    1. Principal component analysis
    2. data-dependent kernel
    3. manifold structures
    4. nonlinear subspace

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    • (2019)Online density estimation over high-dimensional stationary and non-stationary data streamsData & Knowledge Engineering10.1016/j.datak.2019.101718123:COnline publication date: 1-Sep-2019
    • (2018)Data-dependent kernel sparsity preserving projection and its application for semi-supervised classificationMultimedia Tools and Applications10.1007/s11042-018-5707-077:18(24459-24475)Online publication date: 1-Sep-2018
    • (2018)Supervised data-dependent kernel sparsity preserving projection for image recognitionApplied Intelligence10.1007/s10489-018-1249-448:12(4923-4936)Online publication date: 1-Dec-2018
    • (2015)Smart Colonography for Distributed Medical Databases with Group Kernel Feature AnalysisACM Transactions on Intelligent Systems and Technology10.1145/26681366:4(1-24)Online publication date: 27-Jul-2015
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