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首页> 外文期刊>Journal of Wildlife Management >A Comparison of Two Modeling Approaches for Evaluating Wildlife–Habitat Relationships
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A Comparison of Two Modeling Approaches for Evaluating Wildlife–Habitat Relationships

机译:两种评估野生动植物与人居关系的建模方法的比较

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摘要

Studies of resource selection form the basis for much of our understanding of wildlife habitat requirements, and resource selection functions (RSFs), which predict relative probability of use, have been proposed as a unifying concept for analysis and interpretation of wildlife habitat data. Logistic regression that contrasts used and available or unused resource units is one of the most common analyses for developing RSFs. Recently, resource utilization functions (RUFs) have been developed, which also predict probability of use. Unlike RSFs, however, RUFs are based on a continuous metric of space use summarized by a utilization distribution. Although both RSFs and RUFs predict space use, a direct comparison of these 2 modeling approaches is lacking. We compared performance of RSFs and RUFs by applying both approaches to location data for 75 Rocky Mountain elk (Cervus elaphus) and 39 mule deer (Odocoileus hemionus) collected at the Starkey Experimental Forest and Range in northeastern Oregon, USA. We evaluated differences in maps of predicted probability of use, relative ranking of habitat variables, and predictive power between the 2 models. For elk, 3 habitat variables were statistically significant (P < 0.05) in the RSF, whereas 7 variables were significant in the RUF. Maps of predicted probability of use differed substantially between the 2 models for elk, as did the relative ranking of habitat variables. For mule deer, 4 variables were significant in the RSF, whereas 6 were significant in the RUF, and maps of predicted probability of use were similar between models. In addition, distance to water was the top-ranked variable in both models for mule deer. Although space use by both species was predicted most accurately by the RSF based on cross-validation, differences in predictive power between models were more substantial for elk than mule deer. To maximize accuracy and utility of predictive wildlife–habitat models, managers must be aware of the relative strengths and weaknesses of different modeling techniques. We conclude that although RUFs represent a substantial advance in resource selection theory, techniques available for generating RUFs remain underdeveloped and, as a result, RUFs sometimes predict less accurately than models derived using more conventional techniques.
机译:资源选择的研究构成了我们对野生动植物栖息地需求的大部分理解的基础,而资源选择功能(RSF)可以预测使用的相对概率,已被提出作为分析和解释野生动植物栖息地数据的统一概念。对比使用和可用或未使用的资源单元的逻辑回归是开发RSF的最常见分析之一。最近,已经开发了资源利用功能(RUF),该功能还可以预测使用的可能性。但是,与RSF不同,RUF是基于利用率分布汇总的空间使用的连续度量。尽管RSF和RUF都可以预测空间使用情况,但仍缺乏对这两种建模方法的直接比较。我们通过将两种方法应用于在美国俄勒冈州东北部的Starkey实验森林和山脉收集的75落基山麋鹿(Cervus elaphus)和39 ule鹿(Odocoileus hemionus)的位置数据,比较了RSF和RUF的性能。我们评估了两种模型之间的预测使用概率,栖息地变量的相对排名以及预测能力在地图上的差异。对于麋鹿,RSF中有3个栖息地变量具有统计学意义(P <0.05),而RUF中有7个变量具有统计学意义。两种麋鹿模型之间的预计使用概率图以及生境变量的相对排名也存在很大差异。对于m鹿,RSF中有4个变量是显着的,而RUF中有6个变量是显着的,并且模型之间的预测使用概率图相似。此外,在两个模型中,距水的距离是m鹿中排名最高的变量。尽管RSF基于交叉验证最准确地预测了这两种物种的空间使用情况,但相比between鹿,麋鹿模型之间的预测能力差异更大。为了最大程度地提高预测性野生动植物栖息地模型的准确性和实用性,管理人员必须意识到不同建模技术的相对优势和劣势。我们得出的结论是,尽管RUFs代表了资源选择理论的实质性进步,但可用于生成RUFs的技术仍未得到开发,因此,RUF有时预测的准确性不如使用更常规技术得出的模型。

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