In this paper, we continue the theoretical and experimental analysis of two widely used combining rules, namely, the simple and weighted average of classifier outputs, that we started in previous works. We analyse and compare the conditions which affect the performance improvement achievable by weighted average over simple average, and over individual classifiers, under the assumption of unbiased and uncorrelated estimation errors. Although our theoretical results have been obtained under strict assumptions, the reported experiments show that they can be useful in real applications, for designing multiple classifier systems based on linear combiners
n the past decade, several rules for fusion of pattern classifiers' outputs have been proposed. Alth...
Classifier fusion is used to combine multiple classification decisions and improve classification pe...
Abstract. Classifier combining rules are designed for the fusion of the results from the component c...
In this paper, we report a theoretical and experimental comparison between two widely used combinati...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
In this paper, a theoretical and experimental analysis of the error-reject trade-off achievable by l...
In this paper, a theoretical and experimental analysis of the error-reject trade-off achievable by l...
We investigate a number of parameters commonly affecting the design of a multiple classifier system ...
Abstract. Recent findings in the domain of combining classifiers provide a surprising revision of th...
In this paper, a framework for the analysis of the error-reject trade-off in linearly combined class...
Abstract. A large experiment on combining classifiers is reported and dis-cussed. It includes, both,...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
To obtain better classification results, the outputs of an ensemble of classifiers can be combined i...
Classifier fusion is used to combine multiple classification decisions and improve classification pe...
The main aim of this paper is to propose weighted classifier combination scheme. The aim is to fuse ...
n the past decade, several rules for fusion of pattern classifiers' outputs have been proposed. Alth...
Classifier fusion is used to combine multiple classification decisions and improve classification pe...
Abstract. Classifier combining rules are designed for the fusion of the results from the component c...
In this paper, we report a theoretical and experimental comparison between two widely used combinati...
In this paper, a theoretical and experimental analysis of linear combiners for multiple classifier s...
In this paper, a theoretical and experimental analysis of the error-reject trade-off achievable by l...
In this paper, a theoretical and experimental analysis of the error-reject trade-off achievable by l...
We investigate a number of parameters commonly affecting the design of a multiple classifier system ...
Abstract. Recent findings in the domain of combining classifiers provide a surprising revision of th...
In this paper, a framework for the analysis of the error-reject trade-off in linearly combined class...
Abstract. A large experiment on combining classifiers is reported and dis-cussed. It includes, both,...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
To obtain better classification results, the outputs of an ensemble of classifiers can be combined i...
Classifier fusion is used to combine multiple classification decisions and improve classification pe...
The main aim of this paper is to propose weighted classifier combination scheme. The aim is to fuse ...
n the past decade, several rules for fusion of pattern classifiers' outputs have been proposed. Alth...
Classifier fusion is used to combine multiple classification decisions and improve classification pe...
Abstract. Classifier combining rules are designed for the fusion of the results from the component c...