Fast adaptive principal component extraction based on a generalized energy function Fast adaptive principal component extraction based on a generalized energy function

Fast adaptive principal component extraction based on a generalized energy function

  • 期刊名字:中国科学F辑
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  • 论文作者:欧阳缮,保铮,廖桂生
  • 作者单位:National Key Laboratory of Radar Signal Processing,Department of Communication and Information Engineering
  • 更新时间:2022-11-29
  • 下载次数:
论文简介

By introducing an arbitrary diagonal matrix, a generalized energy function (GEF) is proposed for searching for the optimum weights of a two layer linear neural network. From the GEF, we derive a recur- sive least squares (RLS) algorithm to extract in parallel multiple principal components of the input covari-ance matrix without designing an asymmetrical circuit. The local stability of the GEF algorithm at the equilibrium is analytically verified. Simulation resultsshow that the GEF algorithm for parallel multiple principal components extraction exhibits the fast convergence and has the improved robustness resis- tance tothe eigenvalue spread of the input covariance matrix as compared to the well-known lateral inhi- bition model (APEX) and least mean square error reconstruction(LMSER) algorithms.

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