Modern applications in sensitive domains such as biometrics and medicine frequently require the use of non-decomposable loss functions such as precision@k, F-measure etc. Compared to point loss functions such as hinge-loss, these offer much more fine grained control over prediction, but at the same time present novel challenges in terms of algorithm design and analysis. In this work we initiate a study of online learning techniques for such non-decomposable loss functions with an aim to enable incremental learning as well as design scalable solvers for batch problems. To this end, we propose an online learning framework for such loss functions. Our model enjoys several nice properties, chief amongst them being the existence of efficient onl...
We study online learning when individual instances are corrupted by adversarially chosen random nois...
We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This i...
Online learning algorithms have recently risen to prominence due to their strong theoretical guarant...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
In this paper, we study the generalization properties of online learning based stochas-tic methods f...
In online bandit learning, the learner aims to minimize a sequence of losses, while only observing t...
In online bandit learning, the learner aims to mini-mize a sequence of losses, while only observing ...
The accuracy of information retrieval systems is often measured using complex loss functions such as...
The framework of online learning with memory naturally captures learning problems with temporal effe...
We consider prediction with expert advice when the loss vectors are assumed to lie in a set describ...
This paper develops a methodology for regret minimization with stochastic first-order oracle feedbac...
Abstract—The goal of a learner, in standard online learning, is to have the cumulative loss not much...
We consider two broad families of non-additive loss functions covering a large number of application...
International audienceMotivated by applications to machine learning and imaging science, we study a ...
We consider the problem of online linear regression on arbitrary deterministic sequences when the am...
We study online learning when individual instances are corrupted by adversarially chosen random nois...
We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This i...
Online learning algorithms have recently risen to prominence due to their strong theoretical guarant...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
In this paper, we study the generalization properties of online learning based stochas-tic methods f...
In online bandit learning, the learner aims to minimize a sequence of losses, while only observing t...
In online bandit learning, the learner aims to mini-mize a sequence of losses, while only observing ...
The accuracy of information retrieval systems is often measured using complex loss functions such as...
The framework of online learning with memory naturally captures learning problems with temporal effe...
We consider prediction with expert advice when the loss vectors are assumed to lie in a set describ...
This paper develops a methodology for regret minimization with stochastic first-order oracle feedbac...
Abstract—The goal of a learner, in standard online learning, is to have the cumulative loss not much...
We consider two broad families of non-additive loss functions covering a large number of application...
International audienceMotivated by applications to machine learning and imaging science, we study a ...
We consider the problem of online linear regression on arbitrary deterministic sequences when the am...
We study online learning when individual instances are corrupted by adversarially chosen random nois...
We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This i...
Online learning algorithms have recently risen to prominence due to their strong theoretical guarant...