International audienceSeasonal behaviours are widely encountered in various applications. For instance, requests on web servers are highly influenced by our daily activities. Seasonal forecasting consists in forecasting the whole next season for a given seasonal time series. It may help a service provider to provision correctly the potentially required resources, avoiding critical situations of over-or under provision. In this article, we propose a generic framework to make seasonal time series forecasting. The framework combines machine learning techniques 1) to identify the typical seasons and 2) to forecast the likelihood of having a season type in one season ahead. We study this framework by comparing the mean squared errors of forecast...
Many companies consider essential to obtain forecast of time series of uncertain variables that infl...
Research in forecasting with Neural Networks (NN) has provided contradictory evidence on their abili...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
International audienceIn this article, we propose a framework for seasonal time series probabilistic...
To deploy web applications, using web servers is paramount. If there is too few of them, application...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
Forecasting demand is challenging. Various products exhibit different demand patterns. While demand ...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
Accurate and reliable seasonal climate forecasts are frequently sought by climate‐sensitive sectors ...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
Time series forecasting plays an increasingly important role in modern business decisions. In today'...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
Many companies consider essential to obtain forecast of time series of uncertain variables that infl...
Research in forecasting with Neural Networks (NN) has provided contradictory evidence on their abili...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
International audienceIn this article, we propose a framework for seasonal time series probabilistic...
To deploy web applications, using web servers is paramount. If there is too few of them, application...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
Forecasting demand is challenging. Various products exhibit different demand patterns. While demand ...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
Accurate and reliable seasonal climate forecasts are frequently sought by climate‐sensitive sectors ...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
Time series forecasting plays an increasingly important role in modern business decisions. In today'...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
Many companies consider essential to obtain forecast of time series of uncertain variables that infl...
Research in forecasting with Neural Networks (NN) has provided contradictory evidence on their abili...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...