We provide a thorough treatment of one-class classification with hyperparameter optimisation for five data descriptors: Support Vector Machine (SVM), Nearest Neighbour Distance (NND), Localised Nearest Neighbour Distance (LNND), Local Outlier Factor (LOF) and Average Localised Proximity (ALP). The hyperparameters of SVM and LOF have to be optimised through cross-validation, while NND, LNND and ALP allow an efficient form of leave-one-out validation and the reuse of a single nearest-neighbour query. We experimentally evaluate the effect of hyperparameter optimisation with 246 classification problems drawn from 50 datasets. From a selection of optimisation algorithms, the recent Malherbe-Powell proposal optimises the hyperparameters of all da...
In this paper we evaluate the performance of the highest probability SVM nearest neighbor (HP-SVM-NN...
This paper proposes a training points selection method for one-class support vector machines. It exp...
Practical applications call for efficient model selection criteria for multiclass support vector mac...
We provide a thorough treatment of one-class classification with hyperparameter optimisation for fiv...
This paper proposes a novel method for solving one-class classification problems. The proposed appro...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
Thesis (Ph.D. (Computer Engineering))--North-West University, Potchefstroom Campus, 2012As digital c...
Support vector machines (SVMs) are considered to be the best machine learning algorithms for minimiz...
Compared with conventional two-class learning schemes, one-class classification simply uses a single...
Hyperparameter tuning is a mandatory step for building a support vector machine classifier. In this ...
Pattern recognition has been employed in a myriad of industrial, commercial and academic application...
The development of complex, powerful classifiers and their constant improvement have contributed muc...
This paper proposes an efficient training strategy for one-class support vector machines. The strate...
Abstract. Pattern recognition techniques have been employed in a myriad of industrial, medical, comm...
In literature multi-class SVM is constructed using One against All, One against One and Decision tre...
In this paper we evaluate the performance of the highest probability SVM nearest neighbor (HP-SVM-NN...
This paper proposes a training points selection method for one-class support vector machines. It exp...
Practical applications call for efficient model selection criteria for multiclass support vector mac...
We provide a thorough treatment of one-class classification with hyperparameter optimisation for fiv...
This paper proposes a novel method for solving one-class classification problems. The proposed appro...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
Thesis (Ph.D. (Computer Engineering))--North-West University, Potchefstroom Campus, 2012As digital c...
Support vector machines (SVMs) are considered to be the best machine learning algorithms for minimiz...
Compared with conventional two-class learning schemes, one-class classification simply uses a single...
Hyperparameter tuning is a mandatory step for building a support vector machine classifier. In this ...
Pattern recognition has been employed in a myriad of industrial, commercial and academic application...
The development of complex, powerful classifiers and their constant improvement have contributed muc...
This paper proposes an efficient training strategy for one-class support vector machines. The strate...
Abstract. Pattern recognition techniques have been employed in a myriad of industrial, medical, comm...
In literature multi-class SVM is constructed using One against All, One against One and Decision tre...
In this paper we evaluate the performance of the highest probability SVM nearest neighbor (HP-SVM-NN...
This paper proposes a training points selection method for one-class support vector machines. It exp...
Practical applications call for efficient model selection criteria for multiclass support vector mac...