The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance

The estimation of the predictive power of transfer functions assumes that the test sites are independent of the modelling sites. Cross-validation in the presence of spatial autocorrelation seriously violates this assumption. This assumption and the consequences of its violation have not been discuss...

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Main Authors: Telford, RJ, Birks, HJB
Format: Article in Journal/Newspaper
Language:unknown
Published: PERGAMON-ELSEVIER SCIENCE LTD 2005
Subjects:
Online Access:http://discovery.ucl.ac.uk/156738/
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author Telford, RJ
Birks, HJB
author_facet Telford, RJ
Birks, HJB
author_sort Telford, RJ
collection University College London: UCL Discovery
description The estimation of the predictive power of transfer functions assumes that the test sites are independent of the modelling sites. Cross-validation in the presence of spatial autocorrelation seriously violates this assumption. This assumption and the consequences of its violation have not been discussed before. We show, by simulation, that the expected 1, 2 of a transfer function model from an autocorrelated environment can be high, and is not near zero as commonly assumed. We investigate a foraminiferal sea surface temperature training set for the North Atlantic, for which, with cross-validation, the modern analogue technique (MAT) and artificial neural networks (ANN) outperform transfer function methods based on a unimodal species-environment response model. However, when a spatially independent test set, the South Atlantic, is used, all models have a similar predictive power. We show that there is a spatial structure in the foraminiferal assemblages even after accounting for temperature, presumably due to autocorrelations in other environmental variables. Since the residuals from MAT show little spatial structure, in contrast to the residuals of unimodal response models, we contend that MAT has inappropriately internalized the non-temperature spatial structure to improve its performance. We argue that most, if not all, estimates of the predictive power of MAT and ANN models for sea surface temperatures hitherto published are over-optimistic and misleading. (c) 2005 Elsevier Ltd. All rights reserved.
format Article in Journal/Newspaper
genre North Atlantic
genre_facet North Atlantic
id ftucl:oai:eprints.ucl.ac.uk.OAI2:156738
institution Open Polar
language unknown
op_collection_id ftucl
op_source QUATERNARY SCI REV , 24 (20-21) 2173 - 2179. (2005)
publishDate 2005
publisher PERGAMON-ELSEVIER SCIENCE LTD
record_format openpolar
spelling ftucl:oai:eprints.ucl.ac.uk.OAI2:156738 2025-01-16T23:42:06+00:00 The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance Telford, RJ Birks, HJB 2005-11 http://discovery.ucl.ac.uk/156738/ unknown PERGAMON-ELSEVIER SCIENCE LTD QUATERNARY SCI REV , 24 (20-21) 2173 - 2179. (2005) PARTIAL LEAST-SQUARES ECOLOGICAL DATA FORAMINIFERA TEMPERATURE Article 2005 ftucl 2016-01-21T23:13:18Z The estimation of the predictive power of transfer functions assumes that the test sites are independent of the modelling sites. Cross-validation in the presence of spatial autocorrelation seriously violates this assumption. This assumption and the consequences of its violation have not been discussed before. We show, by simulation, that the expected 1, 2 of a transfer function model from an autocorrelated environment can be high, and is not near zero as commonly assumed. We investigate a foraminiferal sea surface temperature training set for the North Atlantic, for which, with cross-validation, the modern analogue technique (MAT) and artificial neural networks (ANN) outperform transfer function methods based on a unimodal species-environment response model. However, when a spatially independent test set, the South Atlantic, is used, all models have a similar predictive power. We show that there is a spatial structure in the foraminiferal assemblages even after accounting for temperature, presumably due to autocorrelations in other environmental variables. Since the residuals from MAT show little spatial structure, in contrast to the residuals of unimodal response models, we contend that MAT has inappropriately internalized the non-temperature spatial structure to improve its performance. We argue that most, if not all, estimates of the predictive power of MAT and ANN models for sea surface temperatures hitherto published are over-optimistic and misleading. (c) 2005 Elsevier Ltd. All rights reserved. Article in Journal/Newspaper North Atlantic University College London: UCL Discovery
spellingShingle PARTIAL LEAST-SQUARES
ECOLOGICAL DATA
FORAMINIFERA
TEMPERATURE
Telford, RJ
Birks, HJB
The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title_full The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title_fullStr The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title_full_unstemmed The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title_short The secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
title_sort secret assumption of transfer functions: problems with spatial autocorrelation in evaluating model performance
topic PARTIAL LEAST-SQUARES
ECOLOGICAL DATA
FORAMINIFERA
TEMPERATURE
topic_facet PARTIAL LEAST-SQUARES
ECOLOGICAL DATA
FORAMINIFERA
TEMPERATURE
url http://discovery.ucl.ac.uk/156738/