2021
DOI: 10.47839/ijc.20.2.2164
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Kernel Online System for Fast Principal Component Analysis and its Adaptive Learning

Abstract: An artificial neural system for data compression that sequentially processes linearly nonseparable classes is proposed. The main elements of this system include adjustable radial-basis functions (Epanechnikov’s kernels), an adaptive linear associator learned by a multistep optimal algorithm, and Hebb-Sanger neural network whose nodes are formed by Oja’s neurons. For tuning the modified Oja’s algorithm, additional filtering (in case of noisy data) and tracking (in case of nonstationary data) properties were int… Show more

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Cited by 2 publications
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“…Beyond examining the variance distribution for each component, it allows an assessment of how much each variable influences each PCA component, known as PCA loadings. An interesting view to PCA is presented in [ 25 ].…”
Section: Methods and Toolsmentioning
confidence: 99%
“…Beyond examining the variance distribution for each component, it allows an assessment of how much each variable influences each PCA component, known as PCA loadings. An interesting view to PCA is presented in [ 25 ].…”
Section: Methods and Toolsmentioning
confidence: 99%