In this paper we tackle the problem of fast rates in time series forecasting from a statistical learning perspective. In a serie of papers (e.g. Meir 2000, Modha and Masry 1998, Alquier and Wintenberger 2012) it is shown that the main tools used in learning theory with iid observations can be extended to the prediction of time series. The main message of these papers is that, given a family of predictors, we are able to build a new predictor that predicts the series as well as the best predictor in the family, up to a remainder of order $1/\sqrt{n}$. It is known that this rate cannot be improved in general. In this paper, we show that in the particular case of the least square loss, and under a strong assumption on the time series (phi-mixi...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Observing a stationary time series, we propose in this paper new two steps procedures for predicting...
This letter investigates the supervised learning problem with observations drawn from certain genera...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
We establish rates of convergences in time series forecasting using the statistical learning approac...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
We study prediction of future outcomes with supervised models that use privileged information during...
The problem of time series prediction is studied within the uniform convergence framework of Vapnik ...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Observing a stationary time series, we propose in this paper new two steps procedures for predicting...
This letter investigates the supervised learning problem with observations drawn from certain genera...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
We establish rates of convergences in time series forecasting using the statistical learning approac...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
We establish rates of convergences in statistical learning for time series forecasting. Using the PA...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
We study prediction of future outcomes with supervised models that use privileged information during...
The problem of time series prediction is studied within the uniform convergence framework of Vapnik ...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Observing a stationary time series, we propose in this paper new two steps procedures for predicting...
This letter investigates the supervised learning problem with observations drawn from certain genera...