<div><p>High prediction accuracies are not the only objective to consider when solving problems using machine learning. Instead, particular scientific applications require some explanation of the learned prediction function. For computational biology, positional oligomer importance matrices (POIMs) have been successfully applied to explain the decision of support vector machines (SVMs) using weighted-degree (WD) kernels. To extract relevant biological motifs from POIMs, the motifPOIM method has been devised and showed promising results on real-world data. Our contribution in this paper is twofold: as an extension to POIMs, we propose gPOIM, a general measure of feature importance for arbitrary learning machines and feature sets (including, ...
Position weight matrix (PWM) is not only one of the most widely used bioinformatic methods, but also...
Motivation: Position weight matrices (PWMs) have become a standard for representing biological seque...
We study how a symbolic representation for support vector machines (SVMs) specified by means of abst...
High prediction accuracies are not the only objective to consider when solving problems using machin...
High prediction accuracies are not the only objective to consider when solving problems using machin...
At the heart of many important bioinformatics problems, such as gene finding and function prediction...
Motivation: At the heart of many important bioinformatics problems, such as gene finding and functio...
Motivation: At the heart of many important bioinformatics problems, such as gene finding and functio...
] authors contributed equally Motivation: At the heart of many important bioinformatics problems, su...
Advancing understanding and interpretation of machine learning algorithms has recently been receivin...
<p>The SVM2Motif approach proceeds in two steps: First, feature importances are extracted from a SVM...
<p>In a first step, a POIM is computed corresponding to the trained SVM (shown on the right, from to...
<p>Our approach proceeds in two steps: First, feature importances are extracted from a given learnin...
<p>given a trained SVM, we construct the corresponding POIM before applying the proposed motifPOIM a...
In biological sequence research, the positional weight matrix (PWM) is often used for motif signal d...
Position weight matrix (PWM) is not only one of the most widely used bioinformatic methods, but also...
Motivation: Position weight matrices (PWMs) have become a standard for representing biological seque...
We study how a symbolic representation for support vector machines (SVMs) specified by means of abst...
High prediction accuracies are not the only objective to consider when solving problems using machin...
High prediction accuracies are not the only objective to consider when solving problems using machin...
At the heart of many important bioinformatics problems, such as gene finding and function prediction...
Motivation: At the heart of many important bioinformatics problems, such as gene finding and functio...
Motivation: At the heart of many important bioinformatics problems, such as gene finding and functio...
] authors contributed equally Motivation: At the heart of many important bioinformatics problems, su...
Advancing understanding and interpretation of machine learning algorithms has recently been receivin...
<p>The SVM2Motif approach proceeds in two steps: First, feature importances are extracted from a SVM...
<p>In a first step, a POIM is computed corresponding to the trained SVM (shown on the right, from to...
<p>Our approach proceeds in two steps: First, feature importances are extracted from a given learnin...
<p>given a trained SVM, we construct the corresponding POIM before applying the proposed motifPOIM a...
In biological sequence research, the positional weight matrix (PWM) is often used for motif signal d...
Position weight matrix (PWM) is not only one of the most widely used bioinformatic methods, but also...
Motivation: Position weight matrices (PWMs) have become a standard for representing biological seque...
We study how a symbolic representation for support vector machines (SVMs) specified by means of abst...