A general approach to designing multiple classifiers represents them as a combination of several binary classifiers in order to enable correction of classification errors and increase reliability. This method is explained, for example, in Witten and Frank (Data Mining: Practical Machine Learning Tools and Techniques, 2005, Sect. 7.5). The aim of this paper is to investigate representations of this sort based on Brandt semigroups. We give a formula for the maximum number of errors of binary classifiers, which can be corrected by a multiple classifier of this type. Examples show that our formula does not carry over to larger classes of semigroups. © 2008 Springer Science+Business Media, LLC
Several researchers have proposed effective approaches for binary classification in the last years. ...
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Using multiple binary classifiers is a popular way to construct multi-class classifiers. There exist...
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Several real problems involve the classification of data into categories or classes. Given a data se...
The pace of generating data in all areas is extremely high. This pace has been mounting the pressure...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
Combining classifiers by majority voting (MV) has recently emerged as an effective way of improving...
Several researchers have proposed effective approaches for binary classification in the last years. ...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
Using multiple binary classifiers is a popular way to construct multi-class classifiers. There exist...
The aim of the present article is to obtain a theoretical result essential for applications of combi...
The present article continues the investigation of constructions essential for applications of combi...
This paper continues the investigation of semigroup constructions motivated by applications in data ...
Optimization of multiple classifiers is an important problem in data mining. We introduce additional...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
Several real problems involve the classification of data into categories or classes. Given a data se...
The pace of generating data in all areas is extremely high. This pace has been mounting the pressure...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
Combining classifiers by majority voting (MV) has recently emerged as an effective way of improving...
Several researchers have proposed effective approaches for binary classification in the last years. ...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
Using multiple binary classifiers is a popular way to construct multi-class classifiers. There exist...