Automatic forecasts of large numbers of univariate time series are often needed in business and other contexts. We describe two automatic forecasting algorithms that have been implemented in the forecast package for R. The first is based on innovations state space models that underly exponential smoothing methods. The second is a step-wise algorithm for forecasting with ARIMA models. The algorithms are applicable to both seasonal and non-seasonal data, and are compared and illustrated using four real time series. We also briefly describe some of the other functionality available in the forecast package
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
This study compared the accuracy of automatic time series forecasting methods in predicting the resu...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Forecasting is one of the important tools in business environment because it assists in decision-mak...
Forecasting models involves predicting the future values of a particular series of data which is mai...
There currently exist several “black box” software libraries for the automatic forecasting of time s...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
The forecasting of time series data is an integral component for management, planning, and decision ...
This thesis incorporates the compilation and derivation of the theory required for an interactive fo...
summary:The paper deals with extensions of exponential smoothing type methods for univariate time se...
Includes bibliographical references.There are two basic approaches to forecasting: model building an...
We provide a framework for robust exponential smoothing. For a class of exponential smoothing varian...
This paper describes the approach that we implemented for producing the point forecasts and predicti...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
This study compared the accuracy of automatic time series forecasting methods in predicting the resu...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Forecasting is one of the important tools in business environment because it assists in decision-mak...
Forecasting models involves predicting the future values of a particular series of data which is mai...
There currently exist several “black box” software libraries for the automatic forecasting of time s...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
The forecasting of time series data is an integral component for management, planning, and decision ...
This thesis incorporates the compilation and derivation of the theory required for an interactive fo...
summary:The paper deals with extensions of exponential smoothing type methods for univariate time se...
Includes bibliographical references.There are two basic approaches to forecasting: model building an...
We provide a framework for robust exponential smoothing. For a class of exponential smoothing varian...
This paper describes the approach that we implemented for producing the point forecasts and predicti...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
This study compared the accuracy of automatic time series forecasting methods in predicting the resu...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...