Support Vector Machines have been used to do classification and regression analysis. One important part of SVMs are the kernels. Although there are several widely used kernel functions, a carefully designed kernel will help to improve the accuracy of SVMs. We present two methods in terms of customizing kernels: one is combining existed kernels as new kernels, the other one is to do feature selection. We did theoretical analysis in the interpretation of feature spaces of combined kernels. Further an experiment on a chemical data set showed improvements of a linear-Gaussian combined kernel over single kernels. Though the improvements are not universal, we present a new idea of creating kernels in SVMs
The performance of support vector machines in non-linearly-separable classification problems strongl...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
In bioinformatics or chemoinformatics, we always need data mining of support vector machines (SVMs) ...
Support Vector Machine (SVMs) are renowned for their excellent performance in solving data-mining pr...
Support Vector Machines (SVM’s) with various kernels have become very successful in pattern classif...
In recent years Support Vector Machines (SVM) have gained increasing popularity over other classific...
The problem of combining different sources of information arises in several situations, for instance...
In the 1990s, a new type of learning algorithm was developed, based on results from statistical lear...
The use of Multiple Kernel Learning (MKL) for Support Vector Machines (SVM) in Machine Learning task...
Support Vector Machine is a powerful classification technique based on the idea of Structural risk m...
It is the most critical for finding the best kernel to apply the kernel-based algorithms in practice...
First and foremost, I am greatly indebted to the supervisor of this work, Prof. Amir Atiya, for his ...
A kernel function is an important component in the support vector machine (SVM) kernel-based classif...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
In the 90s, a new type of learning algorithm was developed, based on results from statistical learni...
The performance of support vector machines in non-linearly-separable classification problems strongl...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
In bioinformatics or chemoinformatics, we always need data mining of support vector machines (SVMs) ...
Support Vector Machine (SVMs) are renowned for their excellent performance in solving data-mining pr...
Support Vector Machines (SVM’s) with various kernels have become very successful in pattern classif...
In recent years Support Vector Machines (SVM) have gained increasing popularity over other classific...
The problem of combining different sources of information arises in several situations, for instance...
In the 1990s, a new type of learning algorithm was developed, based on results from statistical lear...
The use of Multiple Kernel Learning (MKL) for Support Vector Machines (SVM) in Machine Learning task...
Support Vector Machine is a powerful classification technique based on the idea of Structural risk m...
It is the most critical for finding the best kernel to apply the kernel-based algorithms in practice...
First and foremost, I am greatly indebted to the supervisor of this work, Prof. Amir Atiya, for his ...
A kernel function is an important component in the support vector machine (SVM) kernel-based classif...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
In the 90s, a new type of learning algorithm was developed, based on results from statistical learni...
The performance of support vector machines in non-linearly-separable classification problems strongl...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
In bioinformatics or chemoinformatics, we always need data mining of support vector machines (SVMs) ...