Extraction of intrinsic dimension using CCA - Application to blind sources separation

نویسندگان

  • Nicolas Donckers
  • Amaury Lendasse
  • Vincent Wertz
  • Michel Verleysen
چکیده

$EVWUDFW A general-purpose useful parameter in data analysis is the intrinsic dimension of a data set, corresponding to the minimum number of variables necessary to describe the data without significant loss of information. The knowledge of this dimension also facilitates most non-linear projection methods. We will show that the intrinsic dimension of a data set can be efficiently estimated using Curvilinear Component Analysis; we will also show that the method can be applied to the Blind Source Separation problem to estimate the number of sources in a mixing.

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تاریخ انتشار 1999