Literature DB >> 23387123

Predicting the distribution of out-of-reach biotopes with decision trees in a Swedish marine protected area.

Genoveva Gonzalez-Mirelis1, Mats Lindegarth.   

Abstract

Through spatially explicit predictive models, knowledge of spatial patterns of biota can be generated for out-of-reach environments, where there is a paucity of survey data. This knowledge is invaluable for conservation decisions. We used distribution modeling to predict the occurrence of benthic biotopes, or megafaunal communities of the seabed, to support the spatial planning of a marine national park. Nine biotope classes were obtained prior to modeling from multivariate species data derived from point source, underwater imagery. Five map layers relating to depth and terrain were used as predictor variables. Biotope type was predicted on a pixel-by-pixel basis, where pixel size was 15 x 15 m and total modeled area was 455 km2. To choose a suitable modeling technique we compared the performance of five common models based on recursive partitioning: two types of classification and regression trees ([1] pruned by 10-fold cross-validation and [2] pruned by minimizing complexity), random forests, conditional inference (CI) trees, and CI forests. The selected model was a CI forest (an ensemble of CI trees), a machine-learning technique whose discriminatory power (class-by-class area under the curve [AUC] ranged from 0.75 to 0.86) and classification accuracy (72%) surpassed those of the other methods tested. Conditional inference trees are virtually new to the field of ecology. The final model's overall prediction error was 28%. Model predictions were also checked against a custom-built measure of dubiousness, calculated at the polygon level. Key factors other than the choice of modeling technique include: the use of a multinomial response, accounting for the heterogeneity of observations, and spatial autocorrelation. To illustrate how the model results can be implemented in spatial planning, representation of biodiversity in the national park was described and quantified. Given a goal of maximizing classification accuracy, we conclude that conditional inference trees are a promising tool to map biota. Species distribution modeling is presented as an ecological tool that can handle a wide variety of systems (e.g., the benthic system).

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Year:  2012        PMID: 23387123     DOI: 10.1890/11-1608.1

Source DB:  PubMed          Journal:  Ecol Appl        ISSN: 1051-0761            Impact factor:   4.657


  2 in total

1.  Using vessel monitoring system data to improve systematic conservation planning of a multiple-use marine protected area, the Kosterhavet National Park (Sweden).

Authors:  Genoveva Gonzalez-Mirelis; Mats Lindegarth; Mattias Sköld
Journal:  Ambio       Date:  2013-05-29       Impact factor: 5.129

2.  Testing the potential for predictive modeling and mapping and extending its use as a tool for evaluating management scenarios and economic valuation in the Baltic Sea (PREHAB).

Authors:  Mats Lindegarth; Ulf Bergström; Johanna Mattila; Sergej Olenin; Markku Ollikainen; Anna-Leena Downie; Göran Sundblad; Martynas Bučas; Martin Gullström; Martin Snickars; Mikael von Numers; J Robin Svensson; Anna-Kaisa Kosenius
Journal:  Ambio       Date:  2014-02       Impact factor: 5.129

  2 in total

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