International audienceK-nearest neighbours algorithms are among the most popular existing classification methods, due to their simplicity and their good performances. Over the years, several extensions of the initial method have been proposed. In this paper, we propose a K-nearest neighbours approach that uses the theory of imprecise probabilities, and more specifically lower previsions. We show that the proposed approach has several assets: it can handle uncertain data in a very generic way, and decision rules developed within this theory allow us to deal with conflicting information between neighbours or with the absence of close neighbour to the instance to classify. We show that results of the basic k-NN and weighted k-NN methods can be...
The k-nearest-neighbour procedure is a well-known deterministic method used in supervised classifica...
The probabilistic nearest neighbour (PNN) method for pattern recognition was introduced to overcome ...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...
K-nearest neighbours algorithms are among the most popular existing classification methods, due to t...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
International audienceThe k-nearest-neighbor (knn) procedure is a well-known deterministic method us...
International audienceThe k-nearest-neighbor (knn) procedure is a well-known deterministic method us...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
The k nearest neighbor (kNN) approach is a simple and effective nonparametric algorithm for classifi...
Incomplete data is a common drawback that machine learning techniques need to deal with when solving...
The k-nearest-neighbour procedure is a well-known deterministic method used in supervised classifica...
The probabilistic nearest neighbour (PNN) method for pattern recognition was introduced to overcome ...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...
K-nearest neighbours algorithms are among the most popular existing classification methods, due to t...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
The classifications of uncertain data become one of the tedious processes in the data-mining domain....
This work deals with the problem of classifying uncertain data. With this aim the Uncertain Nearest ...
International audienceThe k-nearest-neighbor (knn) procedure is a well-known deterministic method us...
International audienceThe k-nearest-neighbor (knn) procedure is a well-known deterministic method us...
Probabilistic K-nearest neighbour (PKNN) classification has been introduced to improve the performan...
The k nearest neighbor (kNN) approach is a simple and effective nonparametric algorithm for classifi...
Incomplete data is a common drawback that machine learning techniques need to deal with when solving...
The k-nearest-neighbour procedure is a well-known deterministic method used in supervised classifica...
The probabilistic nearest neighbour (PNN) method for pattern recognition was introduced to overcome ...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...