The basic nearest neighbour algorithm has been designed to work with complete data vectors. Moreover, it is assumed that each reference sample as well as classified sample belong to one and the only one class. In the paper this restriction has been dismissed. Through incorporation of certain elements of rough set and fuzzy set theories into k-nn classifier we obtain a sample based classifier with new features. In processing incomplete data, the proposed classifier gives answer in the form of rough set, i.e. indicated lower or upper approximation of one or more classes. The basic nearest neighbour algorithm has been designed to work with complete data vectors and assumed that each reference sample as well as classified sample belongs to one ...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
The k-nearest neighbors method (kNN) is a nonparametric, instance-based method used for regression a...
Incomplete data is a common drawback that machine learning techniques need to deal with when solving...
International audienceA new fuzzy k-nearest neighbours (k-NN) rule is proposed in this article. On c...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
In this paper; we present a new fuzzy-rough nearest neighbour (FRNN) classification algorithm, as an...
In this paper; we present a new fuzzy-rough nearest neighbour (FRNN) classification algorithm, as an...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
The k-nearest neighbors method (kNN) is a nonparametric, instance-based method used for regression a...
Incomplete data is a common drawback that machine learning techniques need to deal with when solving...
International audienceA new fuzzy k-nearest neighbours (k-NN) rule is proposed in this article. On c...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
The article is dedicated to the area of an ensemble of classifiers, in particular, the issues relate...
In this paper; we present a new fuzzy-rough nearest neighbour (FRNN) classification algorithm, as an...
In this paper; we present a new fuzzy-rough nearest neighbour (FRNN) classification algorithm, as an...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...
k-nearest neighbors (k-NN), which is known to be a simple and efficient approach, is a non-parametri...