Comparing species distribution models: a case study of four deep sea urchin species

被引:49
作者
Gonzalez-Irusta, Jose M. [1 ]
Gonzalez-Porto, Marcos [2 ]
Sarralde, Roberto [2 ]
Arrese, Beatriz [3 ]
Almon, Bruno [2 ]
Martin-Sosa, Pablo [2 ]
机构
[1] Marine Scotland, Marine Lab, Aberdeen AB11 9DB, Scotland
[2] Inst Espanol Oceanog, Ctr Oceanog Canarias, Santa Cruz De Tenerife 38011, Canary Islands, Spain
[3] Inst Espanol Oceanog, Madrid 28002, Spain
关键词
Species distribution models; Sea urchins; Niche; Presence-only; PREDICTING SUITABLE HABITAT; PRESENCE-ONLY DATA; SUITABILITY; CONSERVATION; ECHINOIDS; ERRORS; PROTECTION; AGREEMENT; ABSENCE; CORALS;
D O I
10.1007/s10750-014-2090-3
中图分类号
Q17 [水生生物学];
学科分类号
071004 ;
摘要
There is an increasing demand for biodiversity mapping to address new challenges in the management of marine ecosystems. Species distribution models are a key tool in supplying part of this information. However, the use of these models in the marine environment is still developing and the reasons for the underlying use of different methodological approaches are not always clear. In this work, we compared four different statistical techniques: the ecological niche factor analysis (ENFA), the MAXimun ENTropy algorithm (MAXENT), general additive Models (GAMs), and Random Forest. ENFA and MAXENT were applied using presence-only data whereas GAM and Random Forest used presence-absence data. As a case study, we used four deep sea urchin species: Centrostephanus longispinus, Coelopleurus floridanus, Stylocidaris affinis, and Cidaris cidaris. The distribution of the studied sea urchins showed strong bathymetric segregation. Depth was the most important variable, followed by reflectivity and slope. The correlations between the predictive outputs of the models were similar between GAM, Random Forest and MAXENT, and lower for ENFA. Models using presence/absence data showed the highest scores in the four species, significantly outperforming ENFA in most of the cases, although differences with MAXENT were significant in only one species.
引用
收藏
页码:43 / 57
页数:15
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