复傅立叶空间中的原型与矩阵相关学习

M. Straat, M. Kaden, M. Gay, T. Villmann, A. Lampe, U. Seiffert, Michael Biehl, F. Melchert
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引用次数: 3

摘要

在这篇贡献中,我们考虑了可以在复傅立叶系数空间中表示的时间序列和类似函数数据的分类。我们基于所谓的Wirtinger微积分,应用了适合于复值数据的学习向量量化(LVQ)版本。这使得在基于成本函数的广义矩阵关联LVQ (GMLVQ)框架下建立基于梯度的更新规则成为可能。或者,我们考虑在实值特征向量中傅里叶系数的实部和虚部的串联,并通过传统的GMLVQ方法对时域表示进行分类。
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Prototypes and matrix relevance learning in complex fourier space
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.
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Empirical evaluation of gradient methods for matrix learning vector quantization Fusion of deep learning architectures, multilayer feedforward networks and learning vector quantizers for deep classification learning Prototypes and matrix relevance learning in complex fourier space Imputation of reactive silica and available alumina in bauxites by self-organizing maps An evolutionary building algorithm for Deep Neural Networks
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