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The habitat requirements of the rufous treecreeper (Climacteris rufa). 2. Validating predictive habitat models

机译:红树爬山虎(Climacteris rufa)的栖息地要求。 2.验证预测性栖息地模型

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Examining the predictive capability of statistical models with data independent from that used to derive the model is a vital step in the iterative procedure of assessing model performance. I derived logistic regression models of the habitat use of the rufous treecreeper (Climacteris rufa) at two spatial scales: woodland (territory selection model) and territory (nest-site selection model). The performance of these models was assessed in relation to the original data collected and validated with new, independent data. When applied to the original data, the territory model had a high predictive capability correctly classifying 90% of sites (n= 100) that were either occupied or unoccupied by treecreepers. Correct classification rate was reduced to 70% (n = 50) when the model was applied to the validation data. Model performance was generally robust when probability of occurrence values for the species were varied. In contrast, the nest-site model had lower predictive capabilities correctly classifying between 66 and 68% of sites, and performed relatively poorly when probability values were varied. The performance of the models differed slightly between the original and validation data, and substantially between the spatial scales examined. Territory use by rufous treecreepers could be predicted with some confidence indicating that the territory model may be a useful tool for habitat management. Nest-site use could not be predicted with confidence probably as a result of the high abundance of suitable, but unused, nest sites in the study area. (C) 2002 Elsevier Science Ltd. All rights reserved. [References: 39]
机译:在评估模型性能的迭代过程中,使用独立于用于得出模型的数据的独立数据来检查统计模型的预测能力是至关重要的一步。我在两个空间尺度上得出了金红树爬山虎(Climacteris rufa)的栖息地利用的逻辑回归模型:林地(区域选择模型)和领土(巢点选择模型)。这些模型的性能是根据收集的原始数据进行评估的,并使用新的独立数据进行了验证。当应用于原始数据时,地域模型具有较高的预测能力,可以正确地将90%的站点(n = 100)被爬树者占用或未占用的站点分类。当模型应用于验证数据时,正确的分类率降低到70%(n = 50)。当物种的发生值的概率发生变化时,模型性能通常会很强健。相比之下,巢点模型具有较低的预测能力,可以正确地在66%至68%的站点之间进行分类,并且当概率值发生变化时,其表现相对较差。模型的性能在原始数据和验证数据之间略有不同,并且在所检查的空间尺度之间也存在很大差异。可以有把握地预测红宝石树爬虫的领土使用情况,表明该领土模型可能是栖息地管理的有用工具。由于研究区域中大量合适的但未使用的筑巢地点,因此无法自信地预测筑巢地点的使用。 (C)2002 Elsevier ScienceLtd。保留所有权利。 [参考:39]

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