International audienceThe goal of classifier combination can be briefly stated as combining the decisions of individual classifiers to obtain a better classifier. In this paper, we propose a method based on the combination of weak rank classifiers because rankings contain more information than unique choices for a many-class problem. The problem of combining the decisions of more than one classifier with raw outputs in the form of candidate class rankings is considered and formulated as a general discrete optimization problem with an objective function based on the distance between the data and the consensus decision. This formulation uses certain performance statistics about the joint behavior of the ensemble of classifiers. Assuming that ...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
Preference rankings virtually appear in all elds of science (political sciences, behavioral sciences...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
This study presents a theoretical investigation of the rankbased multiple classifier decision proble...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
The method we present aims at building a weighted linear combination of already trained dichotomizer...
The rank aggregation problem can be encountered in many scientific areas (such as economics, social ...
Whereas benchmarking experiments are very frequently used to investigate the perfor-mance of statist...
Abstract. A general procedure for combining binary classifiers for mul-ticlass classification proble...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
Classification and supervised learning problems in general aim to choose a function that best descri...
To obtain classification systems with both good generalization per-formance and efficiency in space ...
Pairwise classification is a class binarization procedure that converts a multi-class problem into a...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
Preference rankings virtually appear in all elds of science (political sciences, behavioral sciences...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
This study presents a theoretical investigation of the rankbased multiple classifier decision proble...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
This study presents a theoretical investigation of the rank-based multiple classifier decision probl...
The method we present aims at building a weighted linear combination of already trained dichotomizer...
The rank aggregation problem can be encountered in many scientific areas (such as economics, social ...
Whereas benchmarking experiments are very frequently used to investigate the perfor-mance of statist...
Abstract. A general procedure for combining binary classifiers for mul-ticlass classification proble...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
Classification and supervised learning problems in general aim to choose a function that best descri...
To obtain classification systems with both good generalization per-formance and efficiency in space ...
Pairwise classification is a class binarization procedure that converts a multi-class problem into a...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...
Preference rankings virtually appear in all elds of science (political sciences, behavioral sciences...
This article develops an efficient combinatorial algorithm based on labeled directed graphs and moti...