Structural Support Vector Machines (SSVMs) have recently gained wide prominence in classifying structured and complex objects like parse-trees, image segments and Part-of-Speech (POS) tags. Typical learning algorithms used in training SSVMs result in model parameters which are vectors residing in a large-dimensional feature space. Such a high-dimensional model parameter vector contains many non-zero components which often lead to slow prediction and storage issues. Hence there is a need for sparse parameter vectors which contain a very small number of non-zero components. L1-regularizer and elastic net regularizer have been traditionally used to get sparse model parameters. Though L1-regularized structural SVMs have been studied in the past...
Suykens et al. (Neurocomputing (2002), in press) describe a weighted least-squares formulation of th...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
International audienceSparsity inducing penalizations are useful tools in variational methods for ma...
Structural Support Vector Machines (SSVMs) have recently gained wide prominence in classifying struc...
Structural Support Vector Machines (SSVMs) and Conditional Random Fields (CRFs) are popular discrimi...
Elastic Net Regularizers have shown much promise in designing sparse classifiers for linear classifi...
ESANN 2014 - Proceedings, European Symposium on Artificial Neural Networks, Computational Intelligen...
Structural Support Vector Machines (SSVMs) have become a popular tool in machine learning for predic...
This manuscript describes a method for training linear SVMs (including binary SVMs, SVM regression, ...
In many real world prediction problems the output is a structured object like a sequence or a tree o...
In this work, we proposed a sparse version of the Support Vector Regression (SVR) algorithm that use...
The recently proposed projection twin support vector machine (PTSVM) is an excellent nonparallel cla...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
Least squares support vector machines (LSSVMs) have been widely applied for classification and regre...
Suykens et al. (Neurocomputing (2002), in press) describe a weighted least-squares formulation of th...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
International audienceSparsity inducing penalizations are useful tools in variational methods for ma...
Structural Support Vector Machines (SSVMs) have recently gained wide prominence in classifying struc...
Structural Support Vector Machines (SSVMs) and Conditional Random Fields (CRFs) are popular discrimi...
Elastic Net Regularizers have shown much promise in designing sparse classifiers for linear classifi...
ESANN 2014 - Proceedings, European Symposium on Artificial Neural Networks, Computational Intelligen...
Structural Support Vector Machines (SSVMs) have become a popular tool in machine learning for predic...
This manuscript describes a method for training linear SVMs (including binary SVMs, SVM regression, ...
In many real world prediction problems the output is a structured object like a sequence or a tree o...
In this work, we proposed a sparse version of the Support Vector Regression (SVR) algorithm that use...
The recently proposed projection twin support vector machine (PTSVM) is an excellent nonparallel cla...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
Least squares support vector machines (LSSVMs) have been widely applied for classification and regre...
Suykens et al. (Neurocomputing (2002), in press) describe a weighted least-squares formulation of th...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
International audienceSparsity inducing penalizations are useful tools in variational methods for ma...