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New statistical methods for analysis of historical data from wildlife populations

机译:分析野生动植物种群历史数据的新统计方法

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摘要

Wildlife biologists, many times with the help of ordinary citizens, have developed and maintained long-term datasets for monitoring the status of wildlife populations. These datasets can range from a collection of citizen-reported sightings of a rare species, to datasets collected by biologists using standardized methods. The commonality is that these datasets span a temporal and spatial scale that is beyond the scope of most scientific studies. Ensuring the continued persistence of wildlife populations requires predictions of the impact of human actions. Regardless if the predictions are quantitative or qualitative, the best we can do is use the past data to predict the future.;Statistical methods are the main data analysis technique used for developing quantitative predictions in the life sciences, but these methods are rarely applied to long-term datasets because the methods are underdeveloped in most cases. This underdevelopment of statistical methods and applications was the motivation for my research. In Chapter 1, I develop a time series analysis method for populations that accounts for errors in detection. In Chapter 2, I develop and apply a variety of methods to predict an extinction threshold using long-term monitoring data from a population of bobwhite quail ( Colinus virginianus). In Chapter 3, I link the unified framework of missing data developed in the statistical literature to species distribution modelling, which is a common method used to analyze historical location reports of a species. In Chapter 4 I introduce an example using location records of one of the rarest avian species in the world--the whooping crane ( Grus americana). The whooping crane location records were imprecisely recorded, and in Chapter 4, I extend regression calibration methods to correct for the location error. In Chapter 5, I explore when a commonly used statistical estimation method will fail for analyses using historical location records; I then test several alternative estimation methods. Finally, in Chapter 6, I present an application by predicting the spatial and temporal distribution of whooping cranes using historical location records. This application was developed to determine what habitat is used by whooping cranes during migration and what habitat may require special protection to ensure survival of the species.
机译:野生动物生物学家多次在普通市民的帮助下开发并维护了长期的数据集,以监测野生动物种群的状况。这些数据集的范围从公民报告的稀有物种目击事件到生物学家使用标准化方法收集的数据集。共同点是这些数据集跨越时空范围,这超出了大多数科学研究的范围。要确保野生生物种群的持续生存,就需要对人类行为的影响做出预测。无论预测是定量的还是定性的,我们所能做的最好的就是使用过去的数据来预测未来。统计方法是生命科学中用于进行定量预测的主要数据分析技术,但是这些方法很少用于长期数据集,因为在大多数情况下该方法尚不完善。统计方法和应用程序的这种欠发达是我研究的动机。在第一章中,我开发了一种用于总体的时间序列分析方法,该方法可解决检测错误。在第2章中,我将开发和应用多种方法,使用来自美洲白鹌鹑(Colinus virginianus)的长期监测数据来预测灭绝阈值。在第3章中,我将统计文献中开发的缺失数据的统一框架与物种分布建模联系在一起,这是一种用于分析物种历史位置报告的常用方法。在第4章中,我介绍了一个使用位置记录的示例,该位置记录是世界上最稀有的鸟类之一-鹤(Grus americana)。不精确地记录了起重机的位置记录,在第4章中,我扩展了回归校准方法以校正位置误差。在第5章中,我探讨了使用历史位置记录进行分析时常用的统计估计方法何时会失败。然后,我测试了几种替代估计方法。最后,在第6章中,我将通过使用历史位置记录预测百分百起重机的时空分布来介绍一种应用。开发该应用程序是为了确定百日鹤在迁徙过程中使用了哪些栖息地,以及哪些栖息地可能需要特殊保护以确保物种的生存。

著录项

  • 作者

    Hefley, Trevor J.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Wildlife conservation.;Statistics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 253 p.
  • 总页数 253
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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