Massive classification, a classification task defined over a vast number of classes (hundreds of thousands or even millions), has become an essential part of many real-world systems, such as face recognition. Existing methods, including the deep networks that achieved remarkable success in recent years, were mostly devised for problems with a moderate number of classes. They would meet with substantial difficulties, e.g., excessive memory demand and computational cost, when applied to massive problems. We present a new method to tackle this problem. This method can efficiently and accurately identify a small number of "active classes" for each mini-batch, based on a set of dynamic class hierarchies constructed on the fly. We also develop an...
International audienceWith our previous research, active learning with multi-classifier showed consi...
International audienceWe are interested in large-scale image classification and especially in the se...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
Machine learning techniques for computer vision applications like object recognition, scene classifi...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceGoing beyond the traditional text classification, involving a few tens of clas...
L'objectif de cette thèse est de développer des algorithmes d'apprentissage adaptés aux grandes mass...
This thesis focuses on developing scalable algorithms for large scale machine learning. In this work...
Deep neural networks (DNNs) have drawn much attention due to their success in various vision tasks. ...
We study large-scale image classification methods that can incorporate new classes and training imag...
We present a scalable and effective classification model to train multiclass boosting for multiclass...
Classical Boosting algorithms, such as AdaBoost, build a strong classifier without concern for the c...
Classification algorithms have been widely used in many application domains. Most of these domains d...
In this paper, we propose a method to apply the popular cascade classifier into face recognition to ...
Classification problems with thousands or more classes often have a large range of class-confusabili...
International audienceWith our previous research, active learning with multi-classifier showed consi...
International audienceWe are interested in large-scale image classification and especially in the se...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
Machine learning techniques for computer vision applications like object recognition, scene classifi...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceGoing beyond the traditional text classification, involving a few tens of clas...
L'objectif de cette thèse est de développer des algorithmes d'apprentissage adaptés aux grandes mass...
This thesis focuses on developing scalable algorithms for large scale machine learning. In this work...
Deep neural networks (DNNs) have drawn much attention due to their success in various vision tasks. ...
We study large-scale image classification methods that can incorporate new classes and training imag...
We present a scalable and effective classification model to train multiclass boosting for multiclass...
Classical Boosting algorithms, such as AdaBoost, build a strong classifier without concern for the c...
Classification algorithms have been widely used in many application domains. Most of these domains d...
In this paper, we propose a method to apply the popular cascade classifier into face recognition to ...
Classification problems with thousands or more classes often have a large range of class-confusabili...
International audienceWith our previous research, active learning with multi-classifier showed consi...
International audienceWe are interested in large-scale image classification and especially in the se...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...