A new OWA (Ordered Weighted Averaging) distance based CxK-nearest neighbor algorithm (CxK-NN) is proposed. In this approach, K-nearest neighbors from each of the classes are taken into account instead of the well-known K-nearest neighbor (K-NN) algorithm in which only the total number, K of neighbors are considered. Distance between the classified point and its K-nearest set is determined based on the OWA operator. After experiments with well-known classification datasets, we conclude that average accuracy results of the OWA distance-based CxK-NN algorithm are better than that of K-NN and weighted K-NN algorithms. © 2012 IEEE
Abstract The nearest neighbour (NN) classification rule is usuallychosen in a large number of patter...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
A new OWA (Ordered Weighted Averaging) distance based CxK-nearest neighbor algorithm (CxK-NN) is pro...
In this study, OWA (Ordered Weighted Averaging) distance based C x K-nearest neighbor algorithm (C x...
K-Nearest neighbor (K-NN) algorithm is a classification algorithm widely used in machine learning, s...
OWA (Ordered Weighted Averaging) Distance Based CxK Nearest Neighbor Algorithm (CxK-NN) via L-R fuzz...
A new C × k nearest neighbor algorithm with a new point of view is proposed. In this algorithm K nei...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
The k-Nearest Neighbor (k-NN) classification method assigns to an unclassified point the class of th...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
The typical nonparametric method of pattern recognition "k-nearest neighbor rule (kNN)" is carried o...
K-nearest-neighbour (KNN) as an important classification method has been widely used in data mining....
In this paper, a new classification method is presented which uses clustering techniques to augment ...
Aggregation operators are useful tools which summarise multiple inputs to a single output. In practi...
Abstract The nearest neighbour (NN) classification rule is usuallychosen in a large number of patter...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
A new OWA (Ordered Weighted Averaging) distance based CxK-nearest neighbor algorithm (CxK-NN) is pro...
In this study, OWA (Ordered Weighted Averaging) distance based C x K-nearest neighbor algorithm (C x...
K-Nearest neighbor (K-NN) algorithm is a classification algorithm widely used in machine learning, s...
OWA (Ordered Weighted Averaging) Distance Based CxK Nearest Neighbor Algorithm (CxK-NN) via L-R fuzz...
A new C × k nearest neighbor algorithm with a new point of view is proposed. In this algorithm K nei...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
The k-Nearest Neighbor (k-NN) classification method assigns to an unclassified point the class of th...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
The typical nonparametric method of pattern recognition "k-nearest neighbor rule (kNN)" is carried o...
K-nearest-neighbour (KNN) as an important classification method has been widely used in data mining....
In this paper, a new classification method is presented which uses clustering techniques to augment ...
Aggregation operators are useful tools which summarise multiple inputs to a single output. In practi...
Abstract The nearest neighbour (NN) classification rule is usuallychosen in a large number of patter...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...