Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognition. The models are conceptually simple and empirical studies have shown that their performance is highly competitive against other techniques. However, the lack of a formal framework for choosing the size of the neighbourhood k is problematic. Furthermore, the method can only make discrete predictions by reporting the relative frequency of the classes in the neighbourhood of the prediction point. We present a probabilistic framework for the k-nearest-neighbour method that largely overcomes these difficulties. Uncertainty is accommodated via a prior distribution on k as well as in the strength of the interaction between neighbours, These prio...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
The probabilistic nearest neighbour (PNN) method for pattern recognition was introduced to overcome ...
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...
International audienceK-nearest neighbours algorithms are among the most popular existing classifica...
K-nearest neighbours algorithms are among the most popular existing classification methods, due to t...
The k-nearest-neighbour procedure is a well-known deterministic method used in supervised classifica...
Abstract. The k-nearest neighbor rule is one of the most attractive pattern classification algorithm...
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...
This paper proposes a new probabilistic classification algorithm using a Markov random field approac...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...
Nearest neighbour algorithms are among the most popular methods used in statistical pattern recognit...
The probabilistic nearest neighbour (PNN) method for pattern recognition was introduced to overcome ...
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...
International audienceK-nearest neighbours algorithms are among the most popular existing classifica...
K-nearest neighbours algorithms are among the most popular existing classification methods, due to t...
The k-nearest-neighbour procedure is a well-known deterministic method used in supervised classifica...
Abstract. The k-nearest neighbor rule is one of the most attractive pattern classification algorithm...
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...
This paper proposes a new probabilistic classification algorithm using a Markov random field approac...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest-neighbor (knn) procedure is a well-known deterministic method used in supervised class...
The k-nearest neighbour (k-nn) model is a simple, popular classifier. Probabilistic k-nn is a more ...