The implementation of training algorithms for SVMs on embedded architectures differs significantly from the electronic support of trained SVM systems. This mostly depends on the complexity and the computational intricacies brought about by the optimization process, which implies a Quadratic-Programming prob-lem and usually involves large data sets. This work presents a general approach to the efficient implementation of SVM training on Digital Signal Processor (DSP) devices. The methodology optimizes efficiency by suitably adjusting the established, effective Keerthi\u2019s optimization algorithm for large data sets. Besides, the algorithm is reformulated to best exploit the computational features of DSP devices and boost efficiency accordi...
Support Vector Machines are a class of machine learning algorithms with applications ranging from cl...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Support Vector Machines (SVMs) have proven to be highly eective for learning many real world dataset...
Training Support Vector Machines (SVMs) requires efficient architectures, endowed with agile memory ...
The chapter deals with the use of the support vector machine (SVM) algorithm as a possible design me...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
Training a support vector machine (SVM) requires the solution of a quadratic programming problem (QP...
This masters thesis deals with algorithms for learning SVM classifiers on hardware systems and their...
In this paper we propose some very simple algorithms and architectures for a digital VLSI implementa...
Training a Support Vector Machine (SVM) requires the solution of a quadratic programming problem (QP...
This thesis focuses on the implementations of a support vector machine (SVM) algorithm on digital si...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
Support Vector Machines are a class of machine learning algorithms with applications ranging from cl...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Support Vector Machines (SVMs) have proven to be highly eective for learning many real world dataset...
Training Support Vector Machines (SVMs) requires efficient architectures, endowed with agile memory ...
The chapter deals with the use of the support vector machine (SVM) algorithm as a possible design me...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Training a support vector machine on a data set of huge size with thousands of classes is a challeng...
Training a support vector machine (SVM) requires the solution of a quadratic programming problem (QP...
This masters thesis deals with algorithms for learning SVM classifiers on hardware systems and their...
In this paper we propose some very simple algorithms and architectures for a digital VLSI implementa...
Training a Support Vector Machine (SVM) requires the solution of a quadratic programming problem (QP...
This thesis focuses on the implementations of a support vector machine (SVM) algorithm on digital si...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
Support Vector Machines are a class of machine learning algorithms with applications ranging from cl...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Support Vector Machines (SVMs) have proven to be highly eective for learning many real world dataset...