Identifying secondary series for stepwise common singular spectrum analysis
Common singular spectrum analysis is a technique which can be used to forecast a primary time series by using the information from a secondary series. Not all secondary series, however, provide useful information. A first contribution in this paper is to point out the properties which a secondary se...
Main Authors: | H Viljoen, SJ Steel |
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Format: | Article |
Language: | English |
Published: |
Operations Research Society of South Africa (ORSSA)
2013-12-01
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Series: | ORiON |
Online Access: | http://orion.journals.ac.za/pub/article/view/134 |
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