Combining the predictions of a set of classifiers has been shown to be an effective way to create composite classifiers that are more accurate than any of the component classifiers. Increased accuracy has been shown in a variety of real-world applications, ranging from protein sequence identification to determining the fat content of ground meat. Despite such individual successes, the answers are not known to fundamental questions about classifier combination, such as Can classifiers from any given model class be combined to create a composite classifier with higher accuracy? or Is it possible to increase the accuracy of a given classifier by combining its predictions with those of only a small number of other classifiers? . The goal of ...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The design of nearest neighbour classifiers can be seen as the partitioning of the whole domain in d...
PROTOTYPE SELECTION FOR COMPOSITE NEAREST NEIGHBOR CLASSIFIERS July 1995 DAVID B. SKALAK, B.S., Unio...
Abstract—The nearest neighbor classifier is one of the most used and well-known techniques for perfo...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
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...
2. Character Recognition System The paper is about the problem of finding good prototypes for a cond...
summary:Prototype Selection (PS) techniques have traditionally been applied prior to Nearest Neighbo...
The nearest neighbor rule is one of the most considered algorithms for supervised learning because o...
In this paper, GP based intelligent scheme has been used to develop an Optimal Composite Classifier ...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The design of nearest neighbour classifiers can be seen as the partitioning of the whole domain in d...
PROTOTYPE SELECTION FOR COMPOSITE NEAREST NEIGHBOR CLASSIFIERS July 1995 DAVID B. SKALAK, B.S., Unio...
Abstract—The nearest neighbor classifier is one of the most used and well-known techniques for perfo...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
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...
2. Character Recognition System The paper is about the problem of finding good prototypes for a cond...
summary:Prototype Selection (PS) techniques have traditionally been applied prior to Nearest Neighbo...
The nearest neighbor rule is one of the most considered algorithms for supervised learning because o...
In this paper, GP based intelligent scheme has been used to develop an Optimal Composite Classifier ...
Prototype generation techniques have arisen as very competitive methods for enhancing the nearest ne...
The nearest-neighbor classifier has been shown to be a powerful tool for multiclass classification. ...
The nearest neighbor classifiers are popular supervised classifiers due to their ease of use and goo...
The k-nearest neighbor (k-NN) algorithm is one of the most well-known supervised classifiers due to ...
The design of nearest neighbour classifiers can be seen as the partitioning of the whole domain in d...