<p>k nearest neighbor (kNN) method is a popular classification method in data mining and statistics because of its simple implementation and significant classification performance. However, it is impractical for traditional kNN methods to assign a fixed k value (even though set by experts) to all test samples. Previous solutions assign different k values to different test samples by the cross validation method but are usually time-consuming. This paper proposes a kTree method to learn different optimal k values for different test/new samples, by involving a training stage in the kNN classification. Specifically, in the training stage, kTree method first learns optimal k values for all training samples by a new sparse reconstruction model, a...
Due to their large sizes and/or dimensions, the classification of Big Data is a challenging task usi...
The k-Nearest Neighbor (kNN) algorithm is widely used in the supervised learning field and, particul...
Big data classification is very slow when using traditional machine learning classifiers, particular...
K Nearest Neighbor (KNN) strategy is a notable classification strategy in data mining and estimation...
The k Nearest Neighbors (kNN) method is a widely used technique to solve classification or regressio...
The K Nearest Neighbor (kNN) method has widely been used in the applications of data mining and mach...
Of a number of ML (Machine Learning) algorithms, k-nearest neighbour (KNN) is among the most common ...
this paper, a fast algorithm for k-nearest neighbor rule based on branch and bound method is propos...
... In this paper, a fast algorithm for k-nearest neighbor rule based on branch and bound method is...
Abstract. Classification of spatial data streams is crucial, since the training dataset changes ofte...
In a classification problem with binary outcome attribute, if the input attributes are both continuo...
The k-NN classifier is one of the most known and widely used nonparametric classifiers. The k-NN rul...
In this paper, we propose an adaptive kNN method for classification, in which different k are select...
The K-nearest neighbors (KNN) machine learning algorithm is a well-known non-parametric classificati...
The nearest neighbor (NN) classifiers, especially the k-NN algorithm, are among the simplest and yet...
Due to their large sizes and/or dimensions, the classification of Big Data is a challenging task usi...
The k-Nearest Neighbor (kNN) algorithm is widely used in the supervised learning field and, particul...
Big data classification is very slow when using traditional machine learning classifiers, particular...
K Nearest Neighbor (KNN) strategy is a notable classification strategy in data mining and estimation...
The k Nearest Neighbors (kNN) method is a widely used technique to solve classification or regressio...
The K Nearest Neighbor (kNN) method has widely been used in the applications of data mining and mach...
Of a number of ML (Machine Learning) algorithms, k-nearest neighbour (KNN) is among the most common ...
this paper, a fast algorithm for k-nearest neighbor rule based on branch and bound method is propos...
... In this paper, a fast algorithm for k-nearest neighbor rule based on branch and bound method is...
Abstract. Classification of spatial data streams is crucial, since the training dataset changes ofte...
In a classification problem with binary outcome attribute, if the input attributes are both continuo...
The k-NN classifier is one of the most known and widely used nonparametric classifiers. The k-NN rul...
In this paper, we propose an adaptive kNN method for classification, in which different k are select...
The K-nearest neighbors (KNN) machine learning algorithm is a well-known non-parametric classificati...
The nearest neighbor (NN) classifiers, especially the k-NN algorithm, are among the simplest and yet...
Due to their large sizes and/or dimensions, the classification of Big Data is a challenging task usi...
The k-Nearest Neighbor (kNN) algorithm is widely used in the supervised learning field and, particul...
Big data classification is very slow when using traditional machine learning classifiers, particular...