...
首页> 外文期刊>Oikos: A Journal of Ecology >Importance of correlations among matrix entries in stochastic models in relation to number of transition matrices
【24h】

Importance of correlations among matrix entries in stochastic models in relation to number of transition matrices

机译:随机模型中矩阵项之间的相关性与转移矩阵数的相关性

获取原文
获取原文并翻译 | 示例
           

摘要

Stochastic matrix models are used to predict population viability and the risk of extinction. Different stochastic methods require different amounts of estimation effort and may lead to divergent estimates. We used 16 transition matrices collected from ten populations of the perennial herb Primula veris to compare population estimates produced by different stochastic methods, such as selection of matrices, selection of vital rates, selection of matrix elements, and Tuljapurkar's approximation. Specifically, we tested the reliability of the methods using different numbers of transition matrices, and examined the importance of correlations among matrix entries. When correlations among matrix entries were included in the models, selection of vital rates produced the lowest and Tuljapurkar's approximation produced the highest estimates of mean population growth rates. Selection of matrices and matrix elements often produced nearly similar population estimates. Simulations based on incompletely estimated correlations among matrix entries considerably differed from those based on all correlations estimated, particularly when correlations were strong. The magnitude of correlations among matrix entries depended on the number of matrices, which made it difficult to generalize correlations within a species. Given that selection of vital rates or matrix elements is used, correlations among matrix entries should usually be included in the model, and they should preferably be estimated from the present data rather than according to other information of the species.
机译:随机矩阵模型用于预测种群生存力和灭绝风险。不同的随机方法需要不同的估算工作量,并且可能导致不同的估算。我们使用了从多年生草本樱草属10个种群中收集的16个过渡矩阵,以比较通过不同随机方法(例如矩阵的选择,生命率的选择,矩阵元素的选择和Tuljapurkar近似)产生的种群估计。具体来说,我们使用不同数量的转换矩阵测试了方法的可靠性,并检验了矩阵条目之间相关性的重要性。当模型中包含矩阵条目之间的相关性时,生命率的选择产生最低,而Tuljapurkar的近似产生的平均人口增长率最高。矩阵和矩阵元素的选择通常会产生几乎相似的总体估计。基于矩阵项之间不完全估计的相关性的模拟与基于所有估计的相关性的模拟有很大不同,特别是在相关性很强的情况下。矩阵条目之间的相关性大小取决于矩阵的数量,这使得很难概括物种内的相关性。假定使用生命率或矩阵元素的选择,则矩阵条目之间的相关性通常应包括在模型中,并且它们应优选根据当前数据而不是根据物种的其他信息进行估算。

著录项

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