Comparing models for predicting species' potential distributions: a case study using correlative and mechanistic predictive modelling techniques

被引:77
|
作者
Robertson, MP [1 ]
Peter, CI
Villet, MH
Ripley, BS
机构
[1] Rhodes Univ, Dept Zool & Entomol, ZA-6140 Grahamstown, South Africa
[2] Univ Natal, Sch Bot & Zool, ZA-3209 Pietermaritzburg, South Africa
[3] Rhodes Univ, Dept Bot, ZA-6140 Grahamstown, South Africa
关键词
predictive biogeography; mechanistic models; correlative models; PCA; logistic regression; Scaevola plumieri; coastal dune plants;
D O I
10.1016/S0304-3800(03)00028-0
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Models used to predict species' potential distributions have been described as either correlative or mechanistic. We attempted to determine whether correlative models could perform as well as mechanistic models for predicting species potential distributions, using a case study. We compared potential distribution predictions made for a coastal dune plant (Scaevola plumieri) along the coast of South Africa, using a mechanistic model based on summer water balance (SWB), and two correlative models (a profile and a group discrimination technique). The profile technique was based on principal components analysis (PCA) and the group-discrimination technique was based on multiple logistic regression (LR). Kappa (kappa) statistics were used to objectively assess model performance and model agreement. Model performance was calculated by measuring the levels of agreement (using kappa) between a set of testing localities (distribution records not used for model building) and each of the model predictions. Using published interpretive guidelines for the kappa statistic, model performance was "excellent" for the SWB model (kappa = 0.852), perfect for the LR model (kappa = 1.000), and "very good" for the PCA model (kappa = 0.721). Model agreement was calculated by measuring the level of agreement between the mechanistic model and the two correlative models. There was "good" model agreement between the SWB and PCA models (kappa = 0.679) and "very good" agreement between the SWB And LR models (kappa = 0.786). The results suggest that correlative models can perform as well as or better than simple mechanistic models. The predictions generated from these three modelling designs are likely to generate different insights into the potential distribution and biology of the target organism and may be appropriate in different situations. The choice of model is likely to be influenced by the aims of the study, the biology of the target organism, the level of knowledge the target organism's biology, and data quality. (C) 2003 Elsevier Science B.V. All rights reserved.
引用
收藏
页码:153 / 167
页数:15
相关论文
共 50 条
  • [41] Uncertainties in Predicting Species Distributions under Climate Change: A Case Study Using Tetranychus evansi (Acari: Tetranychidae), a Widespread Agricultural Pest
    Meynard, Christine N.
    Migeon, Alain
    Navajas, Maria
    PLOS ONE, 2013, 8 (06):
  • [42] Uncertainty analysis methods for comparing predictive models and biomarkers: A case study of dietary methyl mercury exposure
    Ponce, RA
    Bartell, SM
    Kavanagh, TJ
    Woods, JS
    Griffith, WC
    Lee, RC
    Takaro, TK
    Faustman, EM
    REGULATORY TOXICOLOGY AND PHARMACOLOGY, 1998, 28 (02) : 96 - 105
  • [43] The potential of species distribution modelling for reintroduction projects: the case study of the Chequered Skipper in England
    Maes, Dirk
    Ellis, Sam
    Goffart, Philippe
    Cruickshanks, Katie L.
    van Swaay, Chris A. M.
    Cors, Ruddy
    Herremans, Marc
    Swinnen, Kristijn R. R.
    Wils, Carine
    Verhulst, Sofie
    De Bruyn, Luc
    Matthysen, Erik
    O'Riordan, Susannah
    Hoare, Daniel J.
    Bourn, Nigel A. D.
    JOURNAL OF INSECT CONSERVATION, 2019, 23 (02) : 419 - 431
  • [44] The potential of species distribution modelling for reintroduction projects: the case study of the Chequered Skipper in England
    Dirk Maes
    Sam Ellis
    Philippe Goffart
    Katie L. Cruickshanks
    Chris A. M. van Swaay
    Ruddy Cors
    Marc Herremans
    Kristijn R. R. Swinnen
    Carine Wils
    Sofie Verhulst
    Luc De Bruyn
    Erik Matthysen
    Susannah O’Riordan
    Daniel J. Hoare
    Nigel A. D. Bourn
    Journal of Insect Conservation, 2019, 23 : 419 - 431
  • [45] AUTOMATING ECONOMIC MODELLING: A CASE STUDY OF AI'S POTENTIAL WITH LARGE LANGUAGE MODELS
    Reason, T.
    Rawlinson, W.
    Malcolm, B.
    Klijn, S.
    Langham, J.
    Gimblett, A.
    VALUE IN HEALTH, 2023, 26 (12) : S1 - S1
  • [46] Selecting Optimal Random Forest Predictive Models: A Case Study on Predicting the Spatial Distribution of Seabed Hardness
    Li, Jin
    Tran, Maggie
    Siwabessy, Justy
    PLOS ONE, 2016, 11 (02):
  • [47] Predicting species distributions from museum and herbarium records using multiresponse models fitted with multivariate adaptive regression splines
    Elith, Jane
    Leathwick, John
    DIVERSITY AND DISTRIBUTIONS, 2007, 13 (03) : 265 - 275
  • [48] Predicting species distributions from small numbers of occurrence records: a test case using cryptic geckos in Madagascar
    Pearson, Richard G.
    Raxworthy, Christopher J.
    Nakamura, Miguel
    Peterson, A. Townsend
    JOURNAL OF BIOGEOGRAPHY, 2007, 34 (01) : 102 - 117
  • [49] PREDICTING THE QUALITY OF THE FINAL PRODUCT USING MULTIVARIATE STATISTICAL TECHNIQUES - A CASE-STUDY
    KUMAR, NSH
    SRINIVASAN, G
    COMPUTERS & INDUSTRIAL ENGINEERING, 1995, 29 : 37 - 41
  • [50] Data-driven analysis and predictive modelling of hourly Air Quality Index (AQI) using deep learning techniques: a case study of Azamgarh, IndiaData-driven analysis and predictive modelling of hourly Air Quality Index (AQI) using deep learning techniques: a case study of Azamgarh, IndiaA Ansari and AR Quaff
    Asif Ansari
    Abdur Rahman Quaff
    Theoretical and Applied Climatology, 2025, 156 (1)