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  4. A Representer Theorem for Deep Kernel Learning
 
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2019
Journal Article
Title

A Representer Theorem for Deep Kernel Learning

Abstract
In this paper we provide a finite-sample and an infinite-sample representer theorem for the concatenation of (linear combinations of) kernel functions of reproducing kernel Hilbert spaces. These results serve as mathematical foundation for the analysis of machine learning algorithms based on compositions of functions. As a direct consequence in the finite-sample case, the corresponding in finite-dimensional minimization problems can be recast into (nonlinear) finite-dimensional minimization problems, which can be tackled with nonlinear optimization algorithms. Moreover, we show how concatenated machine learning problems can be reformulated as neural networks and how our representer theorem applies to a broad class of state-of-the-art deep learning methods.
Author(s)
Bohn, Bastian  
Rieger, Christian
Griebel, Michael  
Journal
Journal of Machine Learning Research  
Funder
Deutsche Forschungsgemeinschaft DFG  
Link
Link
Language
English
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
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