Stacking species distribution models and adjusting bias by linking them to macroecological models

被引:248
作者
Calabrese, Justin M. [1 ]
Certain, Gregoire [2 ]
Kraan, Casper [3 ]
Dormann, Carsten F. [4 ]
机构
[1] Smithsonian Conservat Biol Inst, Conservat Ecol Ctr, Front Royal, VA 22630 USA
[2] Inst Marine Res, N-9019 Tromso, Norway
[3] Natl Inst Water & Atmospher Res, Hamilton 3216, New Zealand
[4] Univ Freiburg, D-79104 Freiburg, Germany
来源
GLOBAL ECOLOGY AND BIOGEOGRAPHY | 2014年 / 23卷 / 01期
关键词
Boosted regression trees; Kumaraswamy distribution; macroecological models; maximum likelihood; poisson binomial distribution; richness regression models; species richness; stacked species distribution models; INTERTIDAL FLATS; CLIMATE-CHANGE; PATTERNS; RICHNESS; RANGE; PREDICTION; CONSERVATION; BIODIVERSITY; DIVERSITY; FUTURE;
D O I
10.1111/geb.12102
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Aim Species distribution models (SDMs) are common tools in biogeography and conservation ecology. It has been repeatedly claimed that aggregated (stacked) SDMs (S-SDMs) will overestimate species richness. One recently suggested solution to this problem is to use macroecological models of species richness to constrain S-SDMs. Here, we examine current practice in the development of S-SDMs to identify methodological problems, provide tools to overcome these issues, and quantify the performance of correctly stacked S-SDMs alongside macroecological models. Locations Barents Sea, Europe and Dutch Wadden Sea. Methods We present formal mathematical arguments demonstrating how S-SDMs should and should not be stacked. We then compare the performance of macroecological models and correctly stacked S-SDMs on the same data to determine if the former can be used to constrain the latter. Next, we develop a maximum-likelihood approach to adjusting S-SDMs and discuss how it could potentially be used in combination with macroecological models. Finally, we use this tool to quantify how S-SDMs deviate from observed richness in four very different case studies. Results We demonstrate that stacking methods based on thresholding site-level occurrence probabilities will almost always be biased, and that these biases will tend toward systematic overprediction of richness. Next, we show that correctly stacked S-SDMs perform very similarly to macroecological models in that they both have a tendency to overpredict richness in species-poor sites and underpredict it in species-rich sites. Main conclusions Our results suggest that the perception that S-SDMs consistently overpredict richness is driven largely by incorrect stacking methods. With these biases removed, S-SDMs perform similarly to macroecological models, suggesting that combining the two model classes will not offer much improvement. However, if situations where coupling S-SDMs and macroecological models would be beneficial are subsequently identified, the tools we develop would facilitate such a synthesis.
引用
收藏
页码:99 / 112
页数:14
相关论文
共 78 条
[11]   Uncertainty in ensemble forecasting of species distribution [J].
Buisson, Laetitia ;
Thuiller, Wilfried ;
Casajus, Nicolas ;
Lek, Sovan ;
Grenouillet, Gael .
GLOBAL CHANGE BIOLOGY, 2010, 16 (04) :1145-1157
[12]  
Casella G., 2002, Statistical inference, V2nd edition
[13]   Collinearity: a review of methods to deal with it and a simulation study evaluating their performance [J].
Dormann, Carsten F. ;
Elith, Jane ;
Bacher, Sven ;
Buchmann, Carsten ;
Carl, Gudrun ;
Carre, Gabriel ;
Garcia Marquez, Jaime R. ;
Gruber, Bernd ;
Lafourcade, Bruno ;
Leitao, Pedro J. ;
Muenkemueller, Tamara ;
McClean, Colin ;
Osborne, Patrick E. ;
Reineking, Bjoern ;
Schroeder, Boris ;
Skidmore, Andrew K. ;
Zurell, Damaris ;
Lautenbach, Sven .
ECOGRAPHY, 2013, 36 (01) :27-46
[14]   Evolution of climate niches in European mammals? [J].
Dormann, Carsten F. ;
Gruber, Bernd ;
Winter, Marten ;
Herrmann, Dirk .
BIOLOGY LETTERS, 2010, 6 (02) :229-232
[15]   Predicting spatial patterns of plant species richness: a comparison of direct macroecological and species stacking modelling approaches [J].
Dubuis, Anne ;
Pottier, Julien ;
Rion, Vanessa ;
Pellissier, Loic ;
Theurillat, Jean-Paul ;
Guisan, Antoine .
DIVERSITY AND DISTRIBUTIONS, 2011, 17 (06) :1122-1131
[16]   A working guide to boosted regression trees [J].
Elith, J. ;
Leathwick, J. R. ;
Hastie, T. .
JOURNAL OF ANIMAL ECOLOGY, 2008, 77 (04) :802-813
[17]   Novel methods improve prediction of species' distributions from occurrence data [J].
Elith, J ;
Graham, CH ;
Anderson, RP ;
Dudík, M ;
Ferrier, S ;
Guisan, A ;
Hijmans, RJ ;
Huettmann, F ;
Leathwick, JR ;
Lehmann, A ;
Li, J ;
Lohmann, LG ;
Loiselle, BA ;
Manion, G ;
Moritz, C ;
Nakamura, M ;
Nakazawa, Y ;
Overton, JM ;
Peterson, AT ;
Phillips, SJ ;
Richardson, K ;
Scachetti-Pereira, R ;
Schapire, RE ;
Soberón, J ;
Williams, S ;
Wisz, MS ;
Zimmermann, NE .
ECOGRAPHY, 2006, 29 (02) :129-151
[18]   The art of modelling range-shifting species [J].
Elith, Jane ;
Kearney, Michael ;
Phillips, Steven .
METHODS IN ECOLOGY AND EVOLUTION, 2010, 1 (04) :330-342
[19]   Vulnerability of South African animal taxa to climate change [J].
Erasmus, BFN ;
Van Jaarsveld, AS ;
Chown, SL ;
Kshatriya, M ;
Wessels, KJ .
GLOBAL CHANGE BIOLOGY, 2002, 8 (07) :679-693
[20]   Closed-Form Expression for the Poisson-Binomial Probability Density Function [J].
Fernandez, Manuel ;
Williams, Stuart .
IEEE TRANSACTIONS ON AEROSPACE AND ELECTRONIC SYSTEMS, 2010, 46 (02) :803-817