Summarization: The need for accurate, robust, optimised classification systems has been driving information fusion methodology towards a state of early maturity throughout the last decade. Among its shortcomings we identify the lack of statistical foundation in many ad-hoc fusion methods and the lack of strong non-linear combiners with the capacity to partition complex decision spaces. In this work, we draw parallels between the well known decision templates (DT) fusion method and the nearest mean distance classifier in order to extract a useful formulation for the overall expected classification error. Additionally we evaluate DTs against a support vector machine (SVM) discriminant hyper-classifier, using two benchmark biomedical datasets....
We propose a classification method based on a decision tree whose nodes consist of linear Support Ve...
In this paper, we investigate the advantages and weaknesses of various decision fusion schemes using...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Summarization: Information fusion is drawing increasing interest in many application contexts, espec...
Summarization: The question of how we can exploit the ability to combine different learning entities...
The question of how we can exploit the ability to combine different learning entities is fundamental...
Summarization: Classifier ensembles have produced promising results, improving accuracy, confidence ...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
International audienceIn order to improve classification accuracy different image representations ar...
Several solutions have been proposed to exploit the availability of heterogeneous sources of biomole...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
Classifiers generally lack a mechanism to compute decision confidences. As humans, when we sense tha...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
We present a learning algorithm for decision lists which allows features that are constructed from t...
This paper proposes an improved support vector machine (SVM) classifier by introducing a soft decisi...
We propose a classification method based on a decision tree whose nodes consist of linear Support Ve...
In this paper, we investigate the advantages and weaknesses of various decision fusion schemes using...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Summarization: Information fusion is drawing increasing interest in many application contexts, espec...
Summarization: The question of how we can exploit the ability to combine different learning entities...
The question of how we can exploit the ability to combine different learning entities is fundamental...
Summarization: Classifier ensembles have produced promising results, improving accuracy, confidence ...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
International audienceIn order to improve classification accuracy different image representations ar...
Several solutions have been proposed to exploit the availability of heterogeneous sources of biomole...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
Classifiers generally lack a mechanism to compute decision confidences. As humans, when we sense tha...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
We present a learning algorithm for decision lists which allows features that are constructed from t...
This paper proposes an improved support vector machine (SVM) classifier by introducing a soft decisi...
We propose a classification method based on a decision tree whose nodes consist of linear Support Ve...
In this paper, we investigate the advantages and weaknesses of various decision fusion schemes using...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...