Assessing the accuracy of species distribution models more thoroughly

被引:0
|
作者
Liu, C. [1 ]
White, M. [1 ]
Newell, G. [1 ]
机构
[1] Arthur Rylah Inst Environm Res, Dept Sustainabil & Environm, Heidelberg, Vic 3084, Australia
关键词
species distribution; prediction; accuracy measure; prevalence; confidence interval; CONFIDENCE-INTERVALS; CLASSIFICATION; PERFORMANCE; DIFFERENCE; CURVES; AREAS;
D O I
暂无
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Species distribution models (SDMs) are empirical models relating species occurrence to environmental variables based on statistical or other response surfaces. SDMs can be used as a tool to solve some theoretical and applied ecological and environmental problems. The success of their applications depends on the accuracy of the models. In this study we propose an approach to thoroughly assess the accuracy of species distribution models. This includes three aspects: First is to use several accuracy indices that not only measure model discrimination capability, but also those that measure model reliability. The former is the power of the model that differentiates presences from absences; and the latter refers to the capability of the predicted probabilities to reflect the true probabilities that species occurs in individual locations. Previous studies have shown that some accuracy measures are sensitive to the prevalence of the test dataset, and that others are not. While all the reliability measures display this sensitivity to prevalence, only do some discriminatory measures fall into the latter group. Many researchers recommend the use of prevalence-insensitive measures in model accuracy assessment. However, using this approach the calibration power of the models cannot be assessed. We argue that calibration measures should also be provided in model accuracy assessments. The second aspect is to provide confidence intervals associated with the estimates of accuracy indices. Analytical methods, both parametric and nonparametric, have been introduced for constructing the confidence intervals for many accuracy indices. Computer-intensive methods (e.g. bootstrap and jackknife) can also be used to construct confidence intervals that are more attractive than the traditional analytical methods as (1) they have less statistical assumptions; and (2) they are virtually applicable to any accuracy measures. The third aspect is to provide an assessment of accuracy across a range of test data prevalence, since some accuracy indices are dependant on this quality of the test data. Test data with differing levels of prevalence will provide a range of results for the same accuracy index. Assessing the accuracy at only one level of prevalence will not provide a complete picture of the accuracy of the models. The range of test data prevalence can be set up by researchers according to their knowledge about the target species, or could be taken from the confidence interval of the population prevalence estimated from the sample data if the data can be considered as a random sample of the population. In this paper, we use an Australian native plant species, Forest Wire-grass (Tetrarrhena juncea), as an example to demonstrate our approach to more thoroughly assessing the accuracy of species distribution models. The accuracy of two models, one from a machine learning method (Random Forest, RF) and another from a statistical method (generalized additive model, GAM), were assessed using nine accuracy indices along a range of test data prevalence (i.e. the 95% confidence interval of the population prevalence estimated from the sample data using bootstrap percentile method), and a bootstrap method was used to construct the confidence intervals for the accuracy indices. With this approach, the species distribution models were thoroughly assessed.
引用
收藏
页码:4234 / 4240
页数:7
相关论文
共 50 条
  • [41] Assessing global pine wilt disease risk based on ensemble species distribution models
    Aierken, Nuermaimaitijiang
    Wang, Geng
    Chen, Mengyu
    Chai, Guoqi
    Han, Xinyi
    Qian, Zhihe
    Zhang, Xiaoli
    ECOLOGICAL INDICATORS, 2024, 167
  • [42] Assessing the effect of prevalence on the predictive performance of species distribution models using simulated data
    Santika, Truly
    GLOBAL ECOLOGY AND BIOGEOGRAPHY, 2011, 20 (01): : 181 - 192
  • [43] Assessing coastal species distribution models through the integration of terrestrial, oceanic and atmospheric data
    Rickbeil, Gregory J. M.
    Coops, Nicholas C.
    Drever, Mark C.
    Nelson, Trisalyn A.
    JOURNAL OF BIOGEOGRAPHY, 2014, 41 (08) : 1614 - 1625
  • [44] Uncertainty in assessing the impacts of global change with coupled dynamic species distribution and population models
    Conlisk, Erin
    Syphard, Alexandra D.
    Franklin, Janet
    Flint, Lorraine
    Flint, Alan
    Regan, Helen
    GLOBAL CHANGE BIOLOGY, 2013, 19 (03) : 858 - 869
  • [45] Input matters matter: Bioclimatic consistency to map more reliable species distribution models
    Morales-Barbero, Jennifer
    Vega-Alvarez, Julia
    METHODS IN ECOLOGY AND EVOLUTION, 2019, 10 (02): : 212 - 224
  • [46] Data prevalence matters when assessing species' responses using data-driven species distribution models
    Fukuda, Shinji
    De Baets, Bernard
    ECOLOGICAL INFORMATICS, 2016, 32 : 69 - 78
  • [47] Socio-economic variables improve accuracy and change spatial predictions in species distribution models
    Bramorska, Beata
    Komar, Ewa
    Maugeri, Luca
    Ruczyński, Ireneusz
    Żmihorski, Michal
    Science of the Total Environment, 2024, 924
  • [48] Socio-economic variables improve accuracy and change spatial predictions in species distribution models
    Bramorska, Beata
    Komar, Ewa
    Maugeri, Luca
    Ruczynski, Ireneusz
    Zmihorski, Michal
    SCIENCE OF THE TOTAL ENVIRONMENT, 2024, 924
  • [49] The accuracy of plant assemblage prediction from species distribution models varies along environmental gradients
    Pottier, Julien
    Dubuis, Anne
    Pellissier, Loic
    Maiorano, Luigi
    Rossier, Leila
    Randin, Christophe F.
    Vittoz, Pascal
    Guisan, Antoine
    GLOBAL ECOLOGY AND BIOGEOGRAPHY, 2013, 22 (01): : 52 - 63
  • [50] Including imprecisely georeferenced specimens improves accuracy of species distribution models and estimates of niche breadth
    Smith, Adam B.
    Murphy, Stephen J.
    Henderson, David
    Erickson, Kelley D.
    GLOBAL ECOLOGY AND BIOGEOGRAPHY, 2023, 32 (03): : 342 - 355