We study prediction of future outcomes with supervised models that use privileged information during learning. The privileged information comprises samples of time series observed between the baseline time of prediction and the future outcome; this information is only available at training time which differs from the traditional supervised learning. Our question is when using this privileged data leads to more sample-efficient learning of models that use only baseline data for predictions at test time. We give an algorithm for this setting and prove that when the time series are drawn from a non-stationary Gaussian-linear dynamical system of fixed horizon, learning with privileged information is more efficient than learning without it. On s...
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...
This paper develops a toolkit of inference and forecasting methods for a large class of nonlinear in...
We study prediction of future outcomes with supervised models that use privileged information during...
In domains where sample sizes are limited, efficient learning algorithms are critical. Learning usin...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
Predictive state representations (PSRs) are models of dynamical systems that represent state as a ve...
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...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
Observing a stationary time series, we propose in this paper new two steps procedures for predicting...
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...
This paper develops a toolkit of inference and forecasting methods for a large class of nonlinear in...
We study prediction of future outcomes with supervised models that use privileged information during...
In domains where sample sizes are limited, efficient learning algorithms are critical. Learning usin...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
Predictive state representations (PSRs) are models of dynamical systems that represent state as a ve...
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...
In this paper we tackle the problem of fast rates in time series forecasting from a statistical lear...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
Observing a stationary time series, we propose in this paper new two steps procedures for predicting...
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...
This paper develops a toolkit of inference and forecasting methods for a large class of nonlinear in...