based on nearest neighbor error minimization ∗ A prototype reduction algorithm is proposed which simultaneous train both a reduced set of prototypes and a suitable local metric for these prototypes. Starting with an initial selection of a small number of prototypes, it iteratively adjusts both the position (features) of these prototypes and the corresponding local-metric weights. The resulting prototypes/metric combination minimizes a suitable estimation of the classification error probability. Good performance of this algorithm is assessed through experiments with a number of benchmark data sets and through a real two-class classification task which consists of detecting human faces in unrestricted-background pictures
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
summary:Prototype Selection (PS) techniques have traditionally been applied prior to Nearest Neighbo...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
The problem addressed in this paper concerns the prototype reduction for a nearest-neighbor classifi...
In this paper, we raise important issues concerning the evaluation complexity of existing Mahalanobi...
Abstract—The nearest neighbor (NN) rule is one of the most successfully used techniques to resolve c...
The distance metric is the corner stone of nearest neighbor (NN)-based methods, and therefore, of ne...
The development of complex, powerful classifiers and their constant improvement have contributed muc...
Abstract—The nearest neighbor classifier is one of the most used and well-known techniques for perfo...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
This paper concerns the use of prototype reduction schemes (PRS) to optimize the computations involv...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
This paper deals with the task of finding a set of prototypes from the training set. A reduced set i...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
summary:Prototype Selection (PS) techniques have traditionally been applied prior to Nearest Neighbo...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
The problem addressed in this paper concerns the prototype reduction for a nearest-neighbor classifi...
In this paper, we raise important issues concerning the evaluation complexity of existing Mahalanobi...
Abstract—The nearest neighbor (NN) rule is one of the most successfully used techniques to resolve c...
The distance metric is the corner stone of nearest neighbor (NN)-based methods, and therefore, of ne...
The development of complex, powerful classifiers and their constant improvement have contributed muc...
Abstract—The nearest neighbor classifier is one of the most used and well-known techniques for perfo...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
This paper concerns the use of prototype reduction schemes (PRS) to optimize the computations involv...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
This paper deals with the task of finding a set of prototypes from the training set. A reduced set i...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
summary:Prototype Selection (PS) techniques have traditionally been applied prior to Nearest Neighbo...