Title
A Study on Multi-Scale Kernel Optimisation via Centered Kernel-Target Alignment
Abstract
Kernel mapping is one of the most widespread approaches to intrinsically deriving nonlinear classifiers. With the aim of better suiting a given dataset, different kernels have been proposed and different bounds and methodologies have been studied to optimise them. We focus on the optimisation of a multi-scale kernel, where a different width is chosen for each feature. This idea has been barely studied in the literature, although it has been shown to achieve better performance in the presence of heterogeneous attributes. The large number of parameters in multi-scale kernels makes it computationally unaffordable to optimise them by applying traditional cross-validation. Instead, an analytical measure known as centered kernel-target alignment (CKTA) can be used to align the kernel to the so-called ideal kernel matrix. This paper analyses and compares this and other alternatives, providing a review of the literature in kernel optimisation and some insights into the usefulness of multi-scale kernel optimisation via CKTA. When applied to the binary support vector machine paradigm (SVM), the results using 24 datasets show that CKTA with a multi-scale kernel leads to the construction of a well-defined feature space and simpler SVM models, provides an implicit filtering of non-informative features and achieves robust and comparable performance to other methods even when using random initialisations. Finally, we derive some considerations about when a multi-scale approach could be, in general, useful and propose a distance-based initialisation technique for the gradient-ascent method, which shows promising results.
Year
DOI
Venue
2016
10.1007/s11063-015-9471-0
Neural Processing Letters
Keywords
Field
DocType
Kernel-target alignment,Kernel methods,Multi-scale kernel,Parameter selection,Support vector machines,Cross-validation
Graph kernel,Pattern recognition,Radial basis function kernel,Kernel embedding of distributions,Geometric modeling kernel,Tree kernel,Polynomial kernel,Artificial intelligence,Kernel method,Variable kernel density estimation,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
44
2
1370-4621
Citations 
PageRank 
References 
2
0.37
27
Authors
4