International audienceDiscrete supervised learning problems such as classification are often tackled by introducing a continuous surrogate problem akin to regression. Bounding the original error, between estimate and solution, by the surrogate error endows discrete problems with convergence rates already shown for continuous instances. Yet, current approaches do not leverage the fact that discrete problems are essentially predicting a discrete output when continuous problems are predicting a continuous value. In this paper, we tackle this issue for general structured prediction problems, opening the way to "super fast" rates, that is, convergence rates for the excess risk faster than n −1 , where n is the number of observations, with even e...
In this paper we show how to extract a hypothesis with small risk from the ensemble of hypotheses ge...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
37 pages, 4 figuresCyclical step-sizes are becoming increasingly popular in the optimization of deep...
International audienceWe provide novel theoretical insights on structured prediction in the context ...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
We consider a class of structured prediction problems for which the assumptions made by state-of-the...
We establish rates of convergences in time series forecasting using the statistical learning approac...
A powerful and flexible approach to structured prediction consists in embedding the structured objec...
We consider MAP estimators for structured prediction with exponential family models. In particular, ...
We consider the problem of on-line prediction of real-valued labels, assumed bounded in absolute val...
With an immense growth in data, there is a great need for training and testing machine learning mode...
This paper investigates different vector step-size adaptation approaches for non-stationary online, ...
In this paper we show how to extract a hypothesis with small risk from the ensemble of hypotheses ge...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
37 pages, 4 figuresCyclical step-sizes are becoming increasingly popular in the optimization of deep...
International audienceWe provide novel theoretical insights on structured prediction in the context ...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
We consider a class of structured prediction problems for which the assumptions made by state-of-the...
We establish rates of convergences in time series forecasting using the statistical learning approac...
A powerful and flexible approach to structured prediction consists in embedding the structured objec...
We consider MAP estimators for structured prediction with exponential family models. In particular, ...
We consider the problem of on-line prediction of real-valued labels, assumed bounded in absolute val...
With an immense growth in data, there is a great need for training and testing machine learning mode...
This paper investigates different vector step-size adaptation approaches for non-stationary online, ...
In this paper we show how to extract a hypothesis with small risk from the ensemble of hypotheses ge...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
37 pages, 4 figuresCyclical step-sizes are becoming increasingly popular in the optimization of deep...