Abstract. In many learning problems prior knowledge about pattern variations can be formalized and beneficially incorporated into the analysis system.The corresponding notion of invariance is commonly used in conceptionally different ways. We propose a more distinguishing treatment in particular in the active field of kernel methods for machine learning and pattern analysis. Additionally, the fundamental re-lation of invariant kernels and traditional invariant pattern analysis by means of invariant representations will be clarified. After addressing these conceptional questions, we focus on practical aspects and present two generic approaches for constructing invariant kernels. The first approach is based on a technique called invariant int...
Kernel based methods have turned out to be very successful in many elds of data analysis and pattern...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
Kernel methods offer a flexible toolbox for pattern analysis and machine learning. A general class o...
In this document we review and compare some of the classical and modern techniques for solving the p...
When solving data analysis problems it is important to integrate prior knowl-edge and/or structural ...
This chapter presents a highly general model for the group invariance problem. This model is called ...
This thesis develops the theory and practise of reproducing kernel methods. Many functional inverse ...
We analyze in this paper a random feature map based on a theory of invariance (I-theory) introduced ...
http://afst.cedram.org/afst-bin/fitem?id=AFST_2012_6_21_3_501_0National audienceWe consider the prob...
This thesis is about adaptive invariance, and a new model of it: the Group Representation Network. W...
One of central topics of kernel machines in the field of ma-chine learning is a model selection, esp...
This paper considers kernels invariant to translation, rotation and dilation. We show that no non-tr...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel based methods have turned out to be very successful in many elds of data analysis and pattern...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
Kernel methods offer a flexible toolbox for pattern analysis and machine learning. A general class o...
In this document we review and compare some of the classical and modern techniques for solving the p...
When solving data analysis problems it is important to integrate prior knowl-edge and/or structural ...
This chapter presents a highly general model for the group invariance problem. This model is called ...
This thesis develops the theory and practise of reproducing kernel methods. Many functional inverse ...
We analyze in this paper a random feature map based on a theory of invariance (I-theory) introduced ...
http://afst.cedram.org/afst-bin/fitem?id=AFST_2012_6_21_3_501_0National audienceWe consider the prob...
This thesis is about adaptive invariance, and a new model of it: the Group Representation Network. W...
One of central topics of kernel machines in the field of ma-chine learning is a model selection, esp...
This paper considers kernels invariant to translation, rotation and dilation. We show that no non-tr...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
Kernel learning algorithms are currently becoming a standard tool in the area of machine learning an...
Kernel based methods have turned out to be very successful in many elds of data analysis and pattern...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...