In this paper, we investigate the sparsity and recognition capabilities of two approximate Bayesian classification algorithms, the multiclass multi-kernel relevance vector machines (mRVMs) that have been recently proposed. We provide an insight into the behavior of the mRVM models by performing a wide experimentation on a large range of real-world datasets. Furthermore, we monitor various model fitting characteristics that identify the predictive nature of the proposed methods and compare against existing classification techniques. By introducing novel convergence measures, sample selection strategies and model improvements, it is demonstrated that mRVMs can produce state-of-the-art results on multiclass discrimination problems. In addition...
In this paper, we consider Tipping’s relevance vector machine (RVM) [1] and formalize an incremental...
Abstract—Sparse kernel methods are very efficient in solving regression and classification problems....
We address the issue of human activity recognition by introducing the multiclass relevance vector ma...
Abstract—In this paper we investigate the sparsity and recog-nition capabilities of two approximate ...
This paper introduces a general Bayesian framework for obtaining sparse solutions to re-gression and...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
This paper introduces a novel sparse Bayesian machine-learning algorithm for embedded feature select...
This paper introduces a novel sparse Bayesian machine-learning algorithm for embedded feature select...
Relevance vector machines (RVM) have recently attracted much interest in the research community beca...
Abstract—This paper adopts a Bayesian approach to simultaneously learn both an optimal nonlinear cla...
We focus on a selection of kernel parameters in the framework of the relevance vector machine (RVM) ...
Regression tasks belong to the set of core problems faced in statistics and machine learning and pro...
Maximum Likelihood (ML) in the linear model overfits when the number of predictors (M) exceeds the n...
The Relevance Vector Machine (RVM), a Bayesian treatment of generalized linear model of identical fu...
In this paper, we consider Tipping’s relevance vector machine (RVM) [1] and formalize an incremental...
Abstract—Sparse kernel methods are very efficient in solving regression and classification problems....
We address the issue of human activity recognition by introducing the multiclass relevance vector ma...
Abstract—In this paper we investigate the sparsity and recog-nition capabilities of two approximate ...
This paper introduces a general Bayesian framework for obtaining sparse solutions to re-gression and...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
This paper introduces a novel sparse Bayesian machine-learning algorithm for embedded feature select...
This paper introduces a novel sparse Bayesian machine-learning algorithm for embedded feature select...
Relevance vector machines (RVM) have recently attracted much interest in the research community beca...
Abstract—This paper adopts a Bayesian approach to simultaneously learn both an optimal nonlinear cla...
We focus on a selection of kernel parameters in the framework of the relevance vector machine (RVM) ...
Regression tasks belong to the set of core problems faced in statistics and machine learning and pro...
Maximum Likelihood (ML) in the linear model overfits when the number of predictors (M) exceeds the n...
The Relevance Vector Machine (RVM), a Bayesian treatment of generalized linear model of identical fu...
In this paper, we consider Tipping’s relevance vector machine (RVM) [1] and formalize an incremental...
Abstract—Sparse kernel methods are very efficient in solving regression and classification problems....
We address the issue of human activity recognition by introducing the multiclass relevance vector ma...