Similarity measures in many real applications generate indefinite similarity matrices. In this paper, we consider the problem of classification based on such indefinite similarities. These indefinite kernels can be problematic for standard kernel-based algorithms as the optimization problems become nonconvex and the underlying theory is invalidated. In order to adapt kernel methods for similarity-based learning, we introduce a method that aims to simultaneously find a reproducing kernel Hilbert space based on the given similarities and train a classifier with good generalization in that space. The method is formulated as a convex optimization problem. We propose a simplified version that can reduce overfitting and whose associa...
© 2016 Elsevier Inc. Because of several successful applications, indefinite kernels have attracted m...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
Recently, training support vector machines with indefinite kernels has attracted great attention in ...
Similarity measures in many real applications generate indefinite similarity matrices. In this pap...
Kernel functions have become an extremely popular tool in machine learning, with an attractive theor...
I Goal: Supervised learning with indefinite kernels I Why use indefinite kernels?. Several domains p...
We address the problem of general supervised learning when data can only be ac-cessed through an (in...
This thesis extends the paradigm of machine learning with kernels. This paradigm is based on the ide...
AbstractLearning with indefinite kernels attracted considerable attention in recent years due to the...
We continue the investigation of natural conditions for a similarity function to allow learning, wit...
Abstract—Kernel methods are a class of well established and successful algorithms for pattern analys...
I Proliferation of machine learning algorithms in diverse domains. necessitates working with non-exp...
Data similarity is a key concept in many data-driven applications. Many algorithms are sensitive to ...
n this paper we show that many kernel methods can be adapted to deal with indefinite kernels, that i...
In this paper we embed evolutionary computation into statistical learning theory. First, we outline...
© 2016 Elsevier Inc. Because of several successful applications, indefinite kernels have attracted m...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
Recently, training support vector machines with indefinite kernels has attracted great attention in ...
Similarity measures in many real applications generate indefinite similarity matrices. In this pap...
Kernel functions have become an extremely popular tool in machine learning, with an attractive theor...
I Goal: Supervised learning with indefinite kernels I Why use indefinite kernels?. Several domains p...
We address the problem of general supervised learning when data can only be ac-cessed through an (in...
This thesis extends the paradigm of machine learning with kernels. This paradigm is based on the ide...
AbstractLearning with indefinite kernels attracted considerable attention in recent years due to the...
We continue the investigation of natural conditions for a similarity function to allow learning, wit...
Abstract—Kernel methods are a class of well established and successful algorithms for pattern analys...
I Proliferation of machine learning algorithms in diverse domains. necessitates working with non-exp...
Data similarity is a key concept in many data-driven applications. Many algorithms are sensitive to ...
n this paper we show that many kernel methods can be adapted to deal with indefinite kernels, that i...
In this paper we embed evolutionary computation into statistical learning theory. First, we outline...
© 2016 Elsevier Inc. Because of several successful applications, indefinite kernels have attracted m...
Abstract—Proximity captures the degree of similarity between examples and is thereby fundamental in ...
Recently, training support vector machines with indefinite kernels has attracted great attention in ...