Support Vector Machines (SVMs) are popular for many machine learning tasks. With rapid growth of dataset size, the high cost of training limits the wide use of SVMs. Several SVM implementations on GPUs have been proposed to accelerate SVMs. However, they support only classification (SVC) or regression (SVR). In this work, we propose a simple and effective SVM training algorithm on GPUs which can be used for SVC, SVR and one-class SVM. Initial experiments show that our implementation outperforms existing ones. We are in the process of encapsulating our algorithm into an easy-to-use library which has Python, R and MATLAB interfaces
Linear SVMs are a popular choice of binary classifier. It is often necessary to train many different...
This thesis focuses on the implementations of a support vector machine (SVM) algorithm on digital si...
In this paper we study the performance of Spiking Neural Networks (SNN)and Support Vector Machine (S...
This paper presents a GPU-assisted version of the LIBSVM library for Support Vector Machines. SVMs a...
Recent developments in programmable, highly par-allel Graphics Processing Units (GPUs) have enabled ...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
\u3cp\u3eThe support vector machine (SVM) is a supervised learning algorithm used for recognizing pa...
Support Vector Machines are a machine learning approach that is well studied, thoroughly vetted and ...
Machine learning algorithms must be able to efficiently cope with massive data sets. Therefore, they...
Training Support Vector Machines (SVMs) requires efficient architectures, endowed with agile memory ...
Úkolem této práce je implementace trénování a klasifikace SVM klasifikátorů na GPU. Je zde nastíněn ...
The implementation of training algorithms for SVMs on embedded architectures differs significantly f...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Support Vector Machines are a class of machine learning algorithms with applications ranging from cl...
Linear SVMs are a popular choice of binary classifier. It is often necessary to train many different...
This thesis focuses on the implementations of a support vector machine (SVM) algorithm on digital si...
In this paper we study the performance of Spiking Neural Networks (SNN)and Support Vector Machine (S...
This paper presents a GPU-assisted version of the LIBSVM library for Support Vector Machines. SVMs a...
Recent developments in programmable, highly par-allel Graphics Processing Units (GPUs) have enabled ...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
\u3cp\u3eThe support vector machine (SVM) is a supervised learning algorithm used for recognizing pa...
Support Vector Machines are a machine learning approach that is well studied, thoroughly vetted and ...
Machine learning algorithms must be able to efficiently cope with massive data sets. Therefore, they...
Training Support Vector Machines (SVMs) requires efficient architectures, endowed with agile memory ...
Úkolem této práce je implementace trénování a klasifikace SVM klasifikátorů na GPU. Je zde nastíněn ...
The implementation of training algorithms for SVMs on embedded architectures differs significantly f...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Support Vector Machines are a class of machine learning algorithms with applications ranging from cl...
Linear SVMs are a popular choice of binary classifier. It is often necessary to train many different...
This thesis focuses on the implementations of a support vector machine (SVM) algorithm on digital si...
In this paper we study the performance of Spiking Neural Networks (SNN)and Support Vector Machine (S...