Correlation confidence limits for unevenly sampled data

Estimation of correlation with appropriate uncertainty limits for scientific data that are potentially serially correlated is a common problem made seriously challenging especially when data are sampled unevenly in space and/or time. Here we present a new, robust method for estimating correlation wi...

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Published in:Computers & Geosciences
Main Authors: Roberts, J, Curran, M, Poynter, S, Moy, A, van Ommen, T, Vance, T, Tozer, C, Graham, FS, Young, DA, Plummer, C, Pedro, J, Blankenship, D, Siegert, M
Format: Article in Journal/Newspaper
Language:English
Published: Pergamon-Elsevier Science Ltd 2016
Subjects:
Online Access:https://doi.org/10.1016/j.cageo.2016.09.011
http://ecite.utas.edu.au/111909
id ftunivtasecite:oai:ecite.utas.edu.au:111909
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spelling ftunivtasecite:oai:ecite.utas.edu.au:111909 2023-05-15T13:49:03+02:00 Correlation confidence limits for unevenly sampled data Roberts, J Curran, M Poynter, S Moy, A van Ommen, T Vance, T Tozer, C Graham, FS Young, DA Plummer, C Pedro, J Blankenship, D Siegert, M 2016 https://doi.org/10.1016/j.cageo.2016.09.011 http://ecite.utas.edu.au/111909 en eng Pergamon-Elsevier Science Ltd http://dx.doi.org/10.1016/j.cageo.2016.09.011 Roberts, J and Curran, M and Poynter, S and Moy, A and van Ommen, T and Vance, T and Tozer, C and Graham, FS and Young, DA and Plummer, C and Pedro, J and Blankenship, D and Siegert, M, Correlation confidence limits for unevenly sampled data, Computers and Geosciences, 104 pp. 120-124. ISSN 0098-3004 (2016) [Refereed Article] http://ecite.utas.edu.au/111909 Mathematical Sciences Statistics Applied Statistics Refereed Article PeerReviewed 2016 ftunivtasecite https://doi.org/10.1016/j.cageo.2016.09.011 2019-12-13T22:12:09Z Estimation of correlation with appropriate uncertainty limits for scientific data that are potentially serially correlated is a common problem made seriously challenging especially when data are sampled unevenly in space and/or time. Here we present a new, robust method for estimating correlation with uncertainty limits between autocorrelated series that does not require either resampling or interpolation. The technique employs the Gaussian kernel method with a bootstrapping resampling approach to derive the probability density function and resulting uncertainties. The method is validated using an example from radar geophysics. Autocorrelation and error bounds are estimated for an airborne radio-echo profile of ice sheet thickness. The computed limits are robust when withholding 10%, 20%, and 50% of data. As a further example, the method is applied to two time-series of methanesulphonic acid in Antarctic ice cores from different sites. We show how the method allows evaluation of the significance of correlation where the signal-to-noise ratio is low and reveals that the two ice cores exhibit a significant common signal. Article in Journal/Newspaper Antarc* Antarctic Ice Sheet eCite UTAS (University of Tasmania) Antarctic Computers & Geosciences 104 120 124
institution Open Polar
collection eCite UTAS (University of Tasmania)
op_collection_id ftunivtasecite
language English
topic Mathematical Sciences
Statistics
Applied Statistics
spellingShingle Mathematical Sciences
Statistics
Applied Statistics
Roberts, J
Curran, M
Poynter, S
Moy, A
van Ommen, T
Vance, T
Tozer, C
Graham, FS
Young, DA
Plummer, C
Pedro, J
Blankenship, D
Siegert, M
Correlation confidence limits for unevenly sampled data
topic_facet Mathematical Sciences
Statistics
Applied Statistics
description Estimation of correlation with appropriate uncertainty limits for scientific data that are potentially serially correlated is a common problem made seriously challenging especially when data are sampled unevenly in space and/or time. Here we present a new, robust method for estimating correlation with uncertainty limits between autocorrelated series that does not require either resampling or interpolation. The technique employs the Gaussian kernel method with a bootstrapping resampling approach to derive the probability density function and resulting uncertainties. The method is validated using an example from radar geophysics. Autocorrelation and error bounds are estimated for an airborne radio-echo profile of ice sheet thickness. The computed limits are robust when withholding 10%, 20%, and 50% of data. As a further example, the method is applied to two time-series of methanesulphonic acid in Antarctic ice cores from different sites. We show how the method allows evaluation of the significance of correlation where the signal-to-noise ratio is low and reveals that the two ice cores exhibit a significant common signal.
format Article in Journal/Newspaper
author Roberts, J
Curran, M
Poynter, S
Moy, A
van Ommen, T
Vance, T
Tozer, C
Graham, FS
Young, DA
Plummer, C
Pedro, J
Blankenship, D
Siegert, M
author_facet Roberts, J
Curran, M
Poynter, S
Moy, A
van Ommen, T
Vance, T
Tozer, C
Graham, FS
Young, DA
Plummer, C
Pedro, J
Blankenship, D
Siegert, M
author_sort Roberts, J
title Correlation confidence limits for unevenly sampled data
title_short Correlation confidence limits for unevenly sampled data
title_full Correlation confidence limits for unevenly sampled data
title_fullStr Correlation confidence limits for unevenly sampled data
title_full_unstemmed Correlation confidence limits for unevenly sampled data
title_sort correlation confidence limits for unevenly sampled data
publisher Pergamon-Elsevier Science Ltd
publishDate 2016
url https://doi.org/10.1016/j.cageo.2016.09.011
http://ecite.utas.edu.au/111909
geographic Antarctic
geographic_facet Antarctic
genre Antarc*
Antarctic
Ice Sheet
genre_facet Antarc*
Antarctic
Ice Sheet
op_relation http://dx.doi.org/10.1016/j.cageo.2016.09.011
Roberts, J and Curran, M and Poynter, S and Moy, A and van Ommen, T and Vance, T and Tozer, C and Graham, FS and Young, DA and Plummer, C and Pedro, J and Blankenship, D and Siegert, M, Correlation confidence limits for unevenly sampled data, Computers and Geosciences, 104 pp. 120-124. ISSN 0098-3004 (2016) [Refereed Article]
http://ecite.utas.edu.au/111909
op_doi https://doi.org/10.1016/j.cageo.2016.09.011
container_title Computers & Geosciences
container_volume 104
container_start_page 120
op_container_end_page 124
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