The University of Southampton
University of Southampton Institutional Repository

Mapping beta diversity from space: sparse Generalised Dissimilarity Modelling (SGDM) for analysing high-dimensional data

Mapping beta diversity from space: sparse Generalised Dissimilarity Modelling (SGDM) for analysing high-dimensional data
Mapping beta diversity from space: sparse Generalised Dissimilarity Modelling (SGDM) for analysing high-dimensional data
Summary

1. Spatial patterns of community composition turnover (beta diversity) may be mapped through generalised dissimilarity modelling (GDM). While remote sensing data are adequate to describe these patterns, the often high-dimensional nature of these data poses some analytical challenges, potentially resulting in loss of generality. This may hinder the use of such data for mapping and monitoring beta-diversity patterns.

2. This study presents Sparse Generalised Dissimilarity Modelling (SGDM), a methodological framework designed to improve the use of high-dimensional data to predict community turnover with GDM. SGDM consists of a two-stage approach, by first transforming the environmental data with a sparse canonical correlation analysis (SCCA), aimed at dealing with high-dimensional data sets, and secondly fitting the transformed data with GDM. The SCCA penalisation parameters are chosen according to a grid search procedure in order to optimise the predictive performance of a GDM fit on the resulting components. The proposed method was illustrated on a case study with a clear environmental gradient of shrub encroachment following cropland abandonment, and subsequent turnover in the bird communities. Bird community data, collected on 115 plots located along the described gradient, were used to fit composition dissimilarity as a function of several remote sensing data sets, including a time series of Landsat data as well as simulated EnMAP hyperspectral data.

3. The proposed approach always outperformed GDM models when fit on high-dimensional data sets. Its usage on low-dimensional data was not consistently advantageous. Models using high-dimensional data, on the other hand, always outperformed those using low-dimensional data, such as single-date multispectral imagery.

4. This approach improved the direct use of high-dimensional remote sensing data, such as time-series or hyperspectral imagery, for community dissimilarity modelling, resulting in better performing models. The good performance of models using high-dimensional data sets further highlights the relevance of dense time series and data coming from new and forthcoming satellite sensors for ecological applications such as mapping species beta diversity.
biodiversity, community modelling, EnMAP, generalised dissimilarity modelling, hyperspectral data, landsat, remote sensing, sparse canonical correlation analysis, time-series, turnover
2041-210X
764-771
Leitao, Pedro
73c17ded-5136-4860-b47f-5878071b865b
Schwieder, Marcel
6964131c-e1a4-4cc9-977d-223a543b3115
Suess, Stefan
1d535fd8-c1a3-4d67-b62a-0687e5162200
Catry, Ines
8725eaab-f7ad-4dae-bc88-38567113077d
Milton, Edward
f6cb5c0d-a5d4-47d7-860f-096de08e0c24
Moreira, Francisco
31d11c19-7252-451e-bece-e0cb4d163aaa
Osborne, Patrick
c4d4261d-557c-4179-a24e-cdd7a98fb2b8
Pinto, Manuel
a5724f7b-5974-48c6-9926-c398acd8ed3b
Van der Linden, Sebastian
9fb83619-4f86-4d7f-add2-b03a548c4acf
Hostert, Patrick
f907ff23-59da-474f-8d20-5e2a2eb0c6e5
Leitao, Pedro
73c17ded-5136-4860-b47f-5878071b865b
Schwieder, Marcel
6964131c-e1a4-4cc9-977d-223a543b3115
Suess, Stefan
1d535fd8-c1a3-4d67-b62a-0687e5162200
Catry, Ines
8725eaab-f7ad-4dae-bc88-38567113077d
Milton, Edward
f6cb5c0d-a5d4-47d7-860f-096de08e0c24
Moreira, Francisco
31d11c19-7252-451e-bece-e0cb4d163aaa
Osborne, Patrick
c4d4261d-557c-4179-a24e-cdd7a98fb2b8
Pinto, Manuel
a5724f7b-5974-48c6-9926-c398acd8ed3b
Van der Linden, Sebastian
9fb83619-4f86-4d7f-add2-b03a548c4acf
Hostert, Patrick
f907ff23-59da-474f-8d20-5e2a2eb0c6e5

Leitao, Pedro, Schwieder, Marcel, Suess, Stefan, Catry, Ines, Milton, Edward, Moreira, Francisco, Osborne, Patrick, Pinto, Manuel, Van der Linden, Sebastian and Hostert, Patrick (2015) Mapping beta diversity from space: sparse Generalised Dissimilarity Modelling (SGDM) for analysing high-dimensional data. Methods in Ecology and Evolution, 6 (7), 764-771. (doi:10.1111/2041-210X.12378).

Record type: Article

Abstract

Summary

1. Spatial patterns of community composition turnover (beta diversity) may be mapped through generalised dissimilarity modelling (GDM). While remote sensing data are adequate to describe these patterns, the often high-dimensional nature of these data poses some analytical challenges, potentially resulting in loss of generality. This may hinder the use of such data for mapping and monitoring beta-diversity patterns.

2. This study presents Sparse Generalised Dissimilarity Modelling (SGDM), a methodological framework designed to improve the use of high-dimensional data to predict community turnover with GDM. SGDM consists of a two-stage approach, by first transforming the environmental data with a sparse canonical correlation analysis (SCCA), aimed at dealing with high-dimensional data sets, and secondly fitting the transformed data with GDM. The SCCA penalisation parameters are chosen according to a grid search procedure in order to optimise the predictive performance of a GDM fit on the resulting components. The proposed method was illustrated on a case study with a clear environmental gradient of shrub encroachment following cropland abandonment, and subsequent turnover in the bird communities. Bird community data, collected on 115 plots located along the described gradient, were used to fit composition dissimilarity as a function of several remote sensing data sets, including a time series of Landsat data as well as simulated EnMAP hyperspectral data.

3. The proposed approach always outperformed GDM models when fit on high-dimensional data sets. Its usage on low-dimensional data was not consistently advantageous. Models using high-dimensional data, on the other hand, always outperformed those using low-dimensional data, such as single-date multispectral imagery.

4. This approach improved the direct use of high-dimensional remote sensing data, such as time-series or hyperspectral imagery, for community dissimilarity modelling, resulting in better performing models. The good performance of models using high-dimensional data sets further highlights the relevance of dense time series and data coming from new and forthcoming satellite sensors for ecological applications such as mapping species beta diversity.

Text
__userfiles.soton.ac.uk_Users_spd_mydesktop_Leitaoetal2015_Mapping beta diversity from space_OnlineEarly.pdf - Accepted Manuscript
Download (1MB)

More information

e-pub ahead of print date: 16 April 2015
Published date: July 2015
Keywords: biodiversity, community modelling, EnMAP, generalised dissimilarity modelling, hyperspectral data, landsat, remote sensing, sparse canonical correlation analysis, time-series, turnover
Organisations: Global Env Change & Earth Observation, Civil Maritime & Env. Eng & Sci Unit

Identifiers

Local EPrints ID: 381609
URI: http://eprints.soton.ac.uk/id/eprint/381609
ISSN: 2041-210X
PURE UUID: a964369b-e772-4aef-8dcc-11801e4726a7
ORCID for Patrick Osborne: ORCID iD orcid.org/0000-0001-8919-5710

Catalogue record

Date deposited: 01 Oct 2015 16:13
Last modified: 15 Mar 2024 03:21

Export record

Altmetrics

Contributors

Author: Pedro Leitao
Author: Marcel Schwieder
Author: Stefan Suess
Author: Ines Catry
Author: Edward Milton
Author: Francisco Moreira
Author: Patrick Osborne ORCID iD
Author: Manuel Pinto
Author: Sebastian Van der Linden
Author: Patrick Hostert

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×