...
首页> 外文期刊>Ecology and Evolution >A goodness-of-fit test for occupancy models with correlated within-season revisits
【24h】

A goodness-of-fit test for occupancy models with correlated within-season revisits

机译:临时模型的健康测试与赛季内部重新审视相关

获取原文

摘要

Abstract Occupancy modeling is important for exploring species distribution patterns and for conservation monitoring. Within this framework, explicit attention is given to species detection probabilities estimated from replicate surveys to sample units. A central assumption is that replicate surveys are independent Bernoulli trials, but this assumption becomes untenable when ecologists serially deploy remote cameras and acoustic recording devices over days and weeks to survey rare and elusive animals. Proposed solutions involve modifying the detection-level component of the model (e.g., first-order Markov covariate). Evaluating whether a model sufficiently accounts for correlation is imperative, but clear guidance for practitioners is lacking. Currently, an omnibus goodness-of-fit test using a chi-square discrepancy measure on unique detection histories is available for occupancy models (MacKenzie and Bailey, Journal of Agricultural, Biological, and Environmental Statistics , 9, 2004, 300; hereafter, MacKenzie?¢????Bailey test). We propose a join count summary measure adapted from spatial statistics to directly assess correlation after fitting a model. We motivate our work with a dataset of multinight bat call recordings from a pilot study for the North American Bat Monitoring Program. We found in simulations that our join count test was more reliable than the MacKenzie?¢????Bailey test for detecting inadequacy of a model that assumed independence, particularly when serial correlation was low to moderate. A model that included a Markov-structured detection-level covariate produced unbiased occupancy estimates except in the presence of strong serial correlation and a revisit design consisting only of temporal replicates. When applied to two common bat species, our approach illustrates that sophisticated models do not guarantee adequate fit to real data, underscoring the importance of model assessment. Our join count test provides a widely applicable goodness-of-fit test and specifically evaluates occupancy model lack of fit related to correlation among detections within a sample unit. Our diagnostic tool is available for practitioners that serially deploy survey equipment as a way to achieve cost savings.
机译:摘要占用模型对于探索物种分布模式和保护监测非常重要。在此框架内,估计从重复调查到采样单元的物种检测概率。中央假设是复制调查是独立的Bernoulli试验,但是当生态学家串联地部署远程摄像机和数周数来调查稀有和难以捉摸的动物时,这种假设变得无法掌控。提出的解决方案涉及修改模型的检测级别组件(例如,一阶马尔可夫协变量)。评估模型是否充分占相关的账户是必要的,但缺乏从业者的明确指导。目前,使用独特检测历史上的Chi-Square差异测量的Omnibus良好测试可用于占用模式(Mackenzie和Bailey,农业,生物和环境统计,9,2004,300;以下,麦肯齐?¢???? Bailey测试)。我们提出了一种加入计数摘要测量,其适应了空间统计,直接在拟合模型后进行相关性。我们与北美蝙蝠监测计划的试点研究中的多层蝙蝠呼叫录音的数据集进行了激励。我们在模拟中发现,我们的加入计数测试比Mackenzie更可靠,用于检测假定独立的模型的不足的Bailey测试,特别是当串联相关性低至中等时。包括Markov结构检测级协变量的模型,除了存在强烈的串行相关性和仅由时间复制组成的重新拟接设计之外,除了存在不偏的占用估计。当应用于两个常见的蝙蝠物种时,我们的方法说明了复杂的模型不能保证足够适合真实数据,强调模型评估的重要性。我们的加入计数测试提供了广泛适用的健康测试,并具体评估占用模型与样品单元中检测中的检测之间的相关性缺乏契合。我们的诊断工具可用于串联部署调查设备作为实现成本节约的方法。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号