Abstract—The nearest neighbor classifier is one of the most used and well-known techniques for performing recognition tasks. It has also demonstrated itself to be one of the most useful algorithms in data mining in spite of its simplicity. However, the nearest neighbor classifier suffers from several drawbacks such as high storage requirements, low efficiency in classification response, and low noise tolerance. These weaknesses have been the subject of study for many researchers and many solutions have been proposed. Among them, one of the most promising solutions consists of reducing the data used for establishing a classification rule (training data) by means of selecting relevant prototypes. Many prototype selection methods exist in the ...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
Abstract—The nearest neighbor (NN) rule is one of the most successfully used techniques to resolve c...
Prototype selection is a research field which has been active for more than four decades. As a resul...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The k-nearest neighbour rule is commonly considered for classification tasks given its straightforwa...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
Abstract—The nearest neighbor (NN) rule is one of the most successfully used techniques to resolve c...
Prototype selection is a research field which has been active for more than four decades. As a resul...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The k-nearest neighbour rule is commonly considered for classification tasks given its straightforwa...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...
The main two drawbacks of nearest neighbor based classifiers are: high CPU costs when the number of ...