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Prototypes and matrix relevance learning in complex fourier space | IEEE Conference Publication | IEEE Xplore

Prototypes and matrix relevance learning in complex fourier space


Abstract:

In this contribution, we consider the classification of time-series and similar functional data which can be represented in complex Fourier coefficient space. We apply ve...Show More

Abstract:

In this contribution, we consider the classification of time-series and similar functional data which can be represented in complex Fourier coefficient space. We apply versions of Learning Vector Quantization (LVQ) which are suitable for complex-valued data, based on the so-called Wirtinger calculus. It makes possible the formulation of gradient based update rules in the framework of cost-function based Generalized Matrix Relevance LVQ (GMLVQ). Alternatively, we consider the concatenation of real and imaginary parts of Fourier coefficients in a real-valued feature vector and the classification of time domain representations by means of conventional GMLVQ.
Date of Conference: 28-30 June 2017
Date Added to IEEE Xplore: 31 August 2017
ISBN Information:
Conference Location: Nancy, France

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