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contributor authorMcGraw, Marie C.
contributor authorBarnes, Elizabeth A.
date accessioned2019-09-19T10:09:02Z
date available2019-09-19T10:09:02Z
date copyright1/16/2018 12:00:00 AM
date issued2018
identifier otherjcli-d-17-0334.1.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4262100
description abstractAbstractIn climate variability studies, lagged linear regression is frequently used to infer causality. While lagged linear regression analysis can often provide valuable information about causal relationships, lagged regression is also susceptible to overreporting significant relationships when one or more of the variables has substantial memory (autocorrelation). Granger causality analysis takes into account the memory of the data and is therefore not susceptible to this issue. A simple Monte Carlo example highlights the advantages of Granger causality, compared to traditional lagged linear regression analysis in situations with one or more highly autocorrelated variables. Differences between the two approaches are further explored in two illustrative examples applicable to large-scale climate variability studies. Given that Granger causality is straightforward to calculate, Granger causality analysis may be preferable to traditional lagged regression analysis when one or more datasets has large memory.
publisherAmerican Meteorological Society
titleMemory Matters: A Case for Granger Causality in Climate Variability Studies
typeJournal Paper
journal volume31
journal issue8
journal titleJournal of Climate
identifier doi10.1175/JCLI-D-17-0334.1
journal fristpage3289
journal lastpage3300
treeJournal of Climate:;2018:;volume 031:;issue 008
contenttypeFulltext


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