Background: Support Vector Machines (SVMs)--using a variety of string kernels--have been successfully applied to biological sequence classification problems. While SVMs achieve high classification accuracy they lack interpretability. In many applications, it does not suffice that an algorithm just detects a biological signal in the sequence, but it should also provide means to interpret its solution in order to gain biological insight. Results: We propose novel and efficient algorithms for solving the so-called Support Vector Multiple Kernel Learning problem. The developed techniques can be used to understand the obtained support vector decision function in order to extract biologically relevant knowledge about the sequence analysis problem...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
We propose novel algorithms for solving the so-called Support Vector Multiple Kernel Learning proble...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Splice site prediction in DNA sequence is a basic search problem for finding exon/intron and intron/...
In recent years we have witnessed an exponential increase in the amount of biological information, e...
SVMs are very popular in data mining and bioinformatics. This tutorial introduces SVMs and kernel al...
Motivation Classification of proteins sequences into functional and structural families based on seq...
Recently, support vector machine has become a popular model as machine learning. A particular advant...
This tutorial is meant for a broad audience: Students, researchers, biologists and computer scientis...
BACKGROUND: Recent advances and automation in DNA sequencing technology has created a vast amount of...
Background: For splice site recognition, one has to solve two classification problems: discriminatin...
In order to extract protein sequences from nucleotide sequences, it is an important step to recogniz...
Background: For splice site recognition, one has to solve two classification problems: discriminatin...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
We propose novel algorithms for solving the so-called Support Vector Multiple Kernel Learning proble...
Classifying biological sequences is one of the most important tasks in computational biology. In the...
Splice site prediction in DNA sequence is a basic search problem for finding exon/intron and intron/...
In recent years we have witnessed an exponential increase in the amount of biological information, e...
SVMs are very popular in data mining and bioinformatics. This tutorial introduces SVMs and kernel al...
Motivation Classification of proteins sequences into functional and structural families based on seq...
Recently, support vector machine has become a popular model as machine learning. A particular advant...
This tutorial is meant for a broad audience: Students, researchers, biologists and computer scientis...
BACKGROUND: Recent advances and automation in DNA sequencing technology has created a vast amount of...
Background: For splice site recognition, one has to solve two classification problems: discriminatin...
In order to extract protein sequences from nucleotide sequences, it is an important step to recogniz...
Background: For splice site recognition, one has to solve two classification problems: discriminatin...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...
Biological sequence classification (such as protein remote homology detection) solely based on seque...
In genomic sequence analysis tasks like splice site recognition or promoter identification, large am...