Penalized least squares estimation of Volterra filters and higher order statistics

نویسنده

  • Robert D. Nowak
چکیده

| Volterra lters (VFs) and higher order statistics (HOS) are important tools for nonlinear analysis, processing, and modeling. Despite their highly desirable properties, the transfer of VFs and HOS to real-world signal processing problems has been hindered by the requirement of very large data records needed to obtain reliable estimates. The identiication of VFs and the estimation of HOS both fall into the category of ill-posed estimation problems. In this paper, we develop penalized least squares (PLS) estimation methods for VFs and HOS. It is shown that PLS is a very eeective way to incorporate prior information of the problem at hand without directly constraining the estimation procedure. Hence, PLS produces much more reliable estimates. The main contributions of this paper are the development of appropriate penalizing functionals and cross-validation procedures for PLS based VF identiication and HOS estimation. Permission to publish this abstract separately is granted.

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عنوان ژورنال:
  • IEEE Trans. Signal Processing

دوره 46  شماره 

صفحات  -

تاریخ انتشار 1998