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Habitat Suitability Criteria via Parametric Distributions: Estimation, Model Selection and Uncertainty

机译:通过参数分布的生境适宜性标准:估计,模型选择和不确定性

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摘要

Previous methods for constructing univariate habitat suitability criteria (HSC) curves have ranged from professional judgement to kernel-smoothed density functions or combinations thereof. We present a new method of generating HSC curves that applies probability density functions as the mathematical representation of the curves. Compared with previous approaches, benefits of our method include (1) estimation of probability density function parameters directly from raw data, (2) quantitative methods for selecting among several candidate probability density functions, and (3) concise methods for expressing estimation uncertainty in the HSC curves. We demonstrate our method with a thorough example using data collected on the depth of water used by juvenile Chinook salmon (Oncorhynchus tschawytscha) in the Klamath River of northern California and southern Oregon. All R code needed to implement our example is provided in the appendix. Published 2015. This article is a U.S. Government work and is in the public domain in the USA.
机译:用于构造单变量栖息地适应性标准(HSC)曲线的先前方法,范围从专业判断到核平滑的密度函数或其组合。我们提出了一种新的生成HSC曲线的方法,该方法将概率密度函数用作曲线的数学表示。与以前的方法相比,我们的方法的优点包括:(1)直接从原始数据估计概率密度函数参数;(2)在几个候选概率密度函数中进行选择的定量方法;(3)表示估计不确定性的简洁方法。 HSC曲线。我们使用收集的有关北加州和俄勒冈州南部克拉马斯河中的奇努克鲑鱼(Oncorhynchus tschawytscha)所用水深的数据,通过一个详尽的例子来证明我们的方法。附录中提供了实现我们的示例所需的所有R代码。 2015年发布。本文是美国政府的工作,在美国属于公共领域。

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