We explore using online learning for selecting the best parameters of Bag of Words systems when searching large scale image collections. We study two algorithms for no regret online learning: Hedge algorithm that works in the full information setting, and Exp3 that works in the bandit setting. We use these algorithms for parameter selection in two scenarios: (a) using a training set to obtain weights for the different parameters, then either choosing the param-eter setting with maximum weight or combining their re-sults with weighted majority vote; (b) working fully online by selecting a parameter combination at every time step. We demonstrate the usefulness of online learning using ex-periments on four different real world datasets. 1
The goal of my research is to develop self-learning search engines, that can learn online, i.e., dir...
Most of the current image retrieval systems use \u27one-shot\u27 queries to a database to retrieve s...
Online dictionary learning is particularly useful for pro-cessing large-scale and dynamic data in co...
We explore using online learning for selecting the best parameters of Bag of Words systems when sear...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Abstract—Feature selection is an important technique for data mining. Despite its importance, most s...
Most studies of online learning require accessing all the attributes/ features of training instances...
International audienceSeveral recent advances to the state of the art in image classification benchm...
In this paper, we propose an autonomous learning scheme to automatically build visual semantic conce...
Several recent advances to the state of the art in image classification benchmarks have come from be...
Abstract—Active learning methods have been considered with increased interest in the statistical lea...
Class-incremental learning (CIL) aims to train a classification model while the number of classes in...
We consider an online learning problem (classification or prediction) involving disparate sources of...
The web has the potential to serve as an excellent source of example imagery for visual concepts. I...
We present an approach for image retrieval using a very large number of highly selective features an...
The goal of my research is to develop self-learning search engines, that can learn online, i.e., dir...
Most of the current image retrieval systems use \u27one-shot\u27 queries to a database to retrieve s...
Online dictionary learning is particularly useful for pro-cessing large-scale and dynamic data in co...
We explore using online learning for selecting the best parameters of Bag of Words systems when sear...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Abstract—Feature selection is an important technique for data mining. Despite its importance, most s...
Most studies of online learning require accessing all the attributes/ features of training instances...
International audienceSeveral recent advances to the state of the art in image classification benchm...
In this paper, we propose an autonomous learning scheme to automatically build visual semantic conce...
Several recent advances to the state of the art in image classification benchmarks have come from be...
Abstract—Active learning methods have been considered with increased interest in the statistical lea...
Class-incremental learning (CIL) aims to train a classification model while the number of classes in...
We consider an online learning problem (classification or prediction) involving disparate sources of...
The web has the potential to serve as an excellent source of example imagery for visual concepts. I...
We present an approach for image retrieval using a very large number of highly selective features an...
The goal of my research is to develop self-learning search engines, that can learn online, i.e., dir...
Most of the current image retrieval systems use \u27one-shot\u27 queries to a database to retrieve s...
Online dictionary learning is particularly useful for pro-cessing large-scale and dynamic data in co...