International audience—The field of time series forecasting has progressed significantly in recent decades, specially in regards to the need of forecasting economic data. That said, some issues still arise. In particular when we are working with a set of time series that have a large number of variables. Hence, a selection step is usually needed in order to reduce the number of variables that will contribute to forecast each target time series. In this paper, we propose a feature selection and / or dimension reduction algorithm for forecasting multivariate time series, based on (i) the notion of the Granger causality, and (ii) on a selection step based on a clustering strategy. Finally, we carry out experiments on different real data sets, ...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
International audience—The field of time series forecasting has progressed significantly in recent d...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
Time series forecasting deals with the prediction of future values of time-dependent quantities (e.g...
© 2015 American Physical Society.Forecasting a time series from multivariate predictors constitutes ...
Feature selection is an effective technique to reduce dimensionality, for example when the condition...
Multivariate time series data classification has recently attracted interests from both industry and...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Nowadays, data management and processing systems are supposed to store and process large time series...
International audienceResearch on the analysis of time series has gained momentum in recent years, a...
This paper proposes an extension of Granger causality when more than two variables are used in a mul...
In an attempt to implement long-term time series prediction based on the recursive application of a ...
The aim of this study is to propose a new hybrid feature selection model to improve the performance ...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
International audience—The field of time series forecasting has progressed significantly in recent d...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
Time series forecasting deals with the prediction of future values of time-dependent quantities (e.g...
© 2015 American Physical Society.Forecasting a time series from multivariate predictors constitutes ...
Feature selection is an effective technique to reduce dimensionality, for example when the condition...
Multivariate time series data classification has recently attracted interests from both industry and...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Nowadays, data management and processing systems are supposed to store and process large time series...
International audienceResearch on the analysis of time series has gained momentum in recent years, a...
This paper proposes an extension of Granger causality when more than two variables are used in a mul...
In an attempt to implement long-term time series prediction based on the recursive application of a ...
The aim of this study is to propose a new hybrid feature selection model to improve the performance ...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...