The forecasting of time series data is an integral component for management, planning, and decision making. Following the Big Data trend, large amounts of time series data are available in many application domains. The highly dynamic and often noisy character of these domains in combination with the logistic problems of collecting data from a large number of data sources, imposes new requirements on the forecasting process. A constantly increasing number of time series has to be forecasted, preferably with low latency AND high accuracy. This is almost impossible, when keeping the traditional focus on creating one forecast model for each individual time series. In addition, often used forecasting approaches like ARIMA need complete historica...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
This paper reinterprets Maganelli’s (2009) idea of “Forecasting with Judgment” to obtain a dynamic a...
The forecasting of time series data is an integral component for management, planning, and decision ...
Forecasting time series data is an integral component for management, planning and decision making. ...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Forecasting models involves predicting the future values of a particular series of data which is mai...
In this work, a cross-validation procedure is used to identify an appropriate Autoregressive Integr...
In this work, a cross-validation procedure is used to identify an appropriate Autoregressive Integra...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
Our paper aims to evaluate two novel methods on selecting the best forecasting model or its combinat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
There currently exist several “black box” software libraries for the automatic forecasting of time s...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
This paper reinterprets Maganelli’s (2009) idea of “Forecasting with Judgment” to obtain a dynamic a...
The forecasting of time series data is an integral component for management, planning, and decision ...
Forecasting time series data is an integral component for management, planning and decision making. ...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Forecasting models involves predicting the future values of a particular series of data which is mai...
In this work, a cross-validation procedure is used to identify an appropriate Autoregressive Integr...
In this work, a cross-validation procedure is used to identify an appropriate Autoregressive Integra...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
Our paper aims to evaluate two novel methods on selecting the best forecasting model or its combinat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
There currently exist several “black box” software libraries for the automatic forecasting of time s...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
We compare a number of methods that have been proposed in the literature for obtaining h-step ahead ...
This paper reinterprets Maganelli’s (2009) idea of “Forecasting with Judgment” to obtain a dynamic a...