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Application of random forest algorithm for studying habitat selection of colonial herons and egrets in human-influenced landscapes

机译:随机森林算法在人类影响景观中研究殖民鹭和白鹭栖息地的应用

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Understanding the mechanisms of habitat selection is fundamental to the construction of proper conservation and management plans for many avian species. Habitat changes caused by human beings increase the landscape complexity and thus the complexity of data available for explaining species distribution. New techniques that assume no linearity and capable to extrapolate the response variables across landscapes are needed for dealing with difficult relationships between habitat variables and distribution data. We used a random forest algorithm to study breeding-site selection of herons and egrets in a human-influenced landscape by analyzing land use around their colonies. We analyzed the importance of each land-use variable for different scales and its relationship to the probability of colony presence. We found that there exist two main spatial scales on which herons and egrets select their colony sites: medium scale (4 km) and large scale (10-15 km). Colonies were attracted to areas with large amounts of evergreen forests at the medium scale, whereas avoidance of high-density urban areas was important at the large scale. Previous studies used attractive factors, mainly foraging areas, to explain bird-colony distributions, but our study is the first to show the major importance of repellent factors at large scales. We believe that the newest non-linear methods, such as random forests, are needed when modelling complex variable interactions when organisms are distributed in complex landscapes. These methods could help to improve the conservation plans of those species threatened by the advance of highly human-influenced landscapes.
机译:了解栖息地选择的机制是为许多鸟类建立适当的保护和管理计划的基础。人类造成的栖息地变化增加了景观的复杂性,从而增加了可用于解释物种分布的数据的复杂性。需要新的技术来假设栖息地变量和分布数据之间的困难关系,这些新技术无需采用线性关系,并且能够推断出整个景观的响应变量。我们使用随机森林算法,通过分析殖民地附近的土地利用来研究鹭鸟和白鹭在人类影响景观中的繁殖地点选择。我们分析了每个土地利用变量对于不同规模的重要性及其与殖民地存在概率的关系。我们发现存在两个主要的空间尺度,鹭和白鹭在这些空间尺度上选择它们的殖民地:中尺度(4 km)和大尺度(10-15 km)。在中等规模上,有很多常绿森林的地区吸引了殖民地,而在大规模上,避免高密度的城市地区很重要。以前的研究使用诱人的因素(主要是觅食区)来解释鸟类的殖民地分布,但我们的研究首次显示了大规模驱避因素的重要意义。我们相信,当生物体分布在复杂景观中的复杂变量相互作用建模时,需要使用最新的非线性方法,例如随机森林。这些方法可以帮助改善那些受到高度人类影响的景观威胁的物种的保护计划。

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