We propose novel algorithms for solving the so-called Support Vector Multiple Kernel Learning problem and show how they can be used to understand the resulting support vector decision function. While classical kernel-based algorithms (such as SVMs) are based on a single kernel, in Multiple Kernel Learning a quadratically-constraint quadratic program is solved in order to find a sparse convex combination of a set of support vector kernels. We show how this problem can be cast into a semi-infinite linear optimization problem which can in turn be solved efficiently using a boosting-like iterative method in combination with standard SVM optimization algorithms. The proposed method is able to deal with thousands of examples while combining hundr...
Kernel methods have become very popular in machine learning research and many fields of applications...
In order to extract protein sequences from nucleotide sequences, it is an important step to recogniz...
Determining protein sequence similarity is an important task for protein classification and homology...
We propose novel algorithms for solving the so-called Support Vector Multiple Kernel Learning proble...
SVMs are very popular in data mining and bioinformatics. This tutorial introduces SVMs and kernel al...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Multiple kernel learning arises when different types of kernels are employed simultaneously. In part...
This tutorial is meant for a broad audience: Students, researchers, biologists and computer scientis...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
Motivation Classification of proteins sequences into functional and structural families based on seq...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
We introduce a class of string kernels, called mismatch kernels, for use with support vector machine...
In biological sequence classification, it is common to convert variable-length sequences into fixed-...
Abstract Background Kernel-based learning algorithms are among the most advanced machine learning me...
Kernel methods have become very popular in machine learning research and many fields of applications...
In order to extract protein sequences from nucleotide sequences, it is an important step to recogniz...
Determining protein sequence similarity is an important task for protein classification and homology...
We propose novel algorithms for solving the so-called Support Vector Multiple Kernel Learning proble...
SVMs are very popular in data mining and bioinformatics. This tutorial introduces SVMs and kernel al...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Multiple kernel learning arises when different types of kernels are employed simultaneously. In part...
This tutorial is meant for a broad audience: Students, researchers, biologists and computer scientis...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
Motivation Classification of proteins sequences into functional and structural families based on seq...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
We introduce a class of string kernels, called mismatch kernels, for use with support vector machine...
In biological sequence classification, it is common to convert variable-length sequences into fixed-...
Abstract Background Kernel-based learning algorithms are among the most advanced machine learning me...
Kernel methods have become very popular in machine learning research and many fields of applications...
In order to extract protein sequences from nucleotide sequences, it is an important step to recogniz...
Determining protein sequence similarity is an important task for protein classification and homology...