Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting a large number of series that are logically connected in some way, the authors can first cluster them into groups of similar series. In this paper they investigate forecasting the series in each cluster. Similar series are first grouped together using a clustering procedure that is based on a test of hypothesis. The series in each cluster are then pooled together and forecasts are obtained. Simulated results show that this procedure for forecasting similar series performs reasonably well.Autoregressive models, Clustering technique, Mean square forecast error, Pooled series,
AbstractThis paper presents a new approach to forecast the behavior of time series based on similari...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Time series clustering is heavily based on choosing a proper dissimilarity measure between a pair of...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Time series prediction plays a pivotal role in various areas, including for example finance, weather...
Data analysts when facing a forecasting task involving a large number of time series, they regularly...
This paper proposes a novel time series forecasting method based on a weighted self-constructing clu...
Organizations that use time series forecasting on a regular basis generally forecast many variables,...
This project presents a new approach to forecast the behavior of time series based on similarity of ...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Demand for forecasting has increased significantly due to the rapid changes in technology, social ch...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
In ensemble forecasting system, the divergence of the ensemble members during evolution may lead to ...
Data analysts when forecasting large number of time series, they regularly employ one of the followi...
AbstractThis paper presents a new approach to forecast the behavior of time series based on similari...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Time series clustering is heavily based on choosing a proper dissimilarity measure between a pair of...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Time series prediction plays a pivotal role in various areas, including for example finance, weather...
Data analysts when facing a forecasting task involving a large number of time series, they regularly...
This paper proposes a novel time series forecasting method based on a weighted self-constructing clu...
Organizations that use time series forecasting on a regular basis generally forecast many variables,...
This project presents a new approach to forecast the behavior of time series based on similarity of ...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Demand for forecasting has increased significantly due to the rapid changes in technology, social ch...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
In ensemble forecasting system, the divergence of the ensemble members during evolution may lead to ...
Data analysts when forecasting large number of time series, they regularly employ one of the followi...
AbstractThis paper presents a new approach to forecast the behavior of time series based on similari...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Time series clustering is heavily based on choosing a proper dissimilarity measure between a pair of...