Enhancing Pattern Classification in Support Vector Machines through Matrix Formulation

Support Vector Machines (SVM) have gathered significant acclaim as classifiers due to their successful implementation of Statistical Learning Theory. However, in the context of multiclass and multilabel settings, the reliance on vector-based formulations in existing SVM-based models poses limitations regarding flexibility and ease of incorporating additional terms to handle specific challenges. To overcome these limitations, our research paper focuses on introducing a matrix formulation for SVM that effectively addresses these constraints. By employing the Accelerated Gradient Descent method in the dual, we notably enhance the efficiency of solving the Matrix-SVM problem. Experimental evaluations on multilabel and multiclass datasets demonstrate that Matrix SVM achieves superior time efficacy while delivering similar results to Binary Relevance SVM. Moreover, our matrix formulation unveils crucial insights and advantages that may not be readily apparent in traditional vector-based notations. We emphasize that numerous multilabel models can be viewed as extensions of SVM, with customised modifications to meet specific requirements. The matrix formulation presented in this paper establishes a solid foundation for developing more sophisticated models capable of effectively addressing the distinctive challenges encountered in multilabel learning.

READ FULL TEXT

page 9

page 10

research
05/10/2023

Enhancing Quantum Support Vector Machines through Variational Kernel Training

Quantum machine learning (QML) has witnessed immense progress recently, ...
research
06/29/2023

Orbit Classification of asteroids using implementation of radial Basis Function on Support Vector Machines

This research paper focuses on the implementation of radial Basis Functi...
research
11/05/2020

AML-SVM: Adaptive Multilevel Learning with Support Vector Machines

The support vector machines (SVM) is one of the most widely used and pra...
research
08/24/2010

NESVM: a Fast Gradient Method for Support Vector Machines

Support vector machines (SVMs) are invaluable tools for many practical a...
research
03/25/2020

A Unified Framework for Multiclass and Multilabel Support Vector Machines

We propose a novel integrated formulation for multiclass and multilabel ...
research
11/21/2013

A Unified SVM Framework for Signal Estimation

This paper presents a unified framework to tackle estimation problems in...
research
04/01/2021

Distributed support-vector-machine over dynamic balanced directed networks

In this paper, we consider the binary classification problem via distrib...

Please sign up or login with your details

Forgot password? Click here to reset