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首页> 外文期刊>Fisheries Research >Incorporating spatial autocorrelation into the general linear modelwith an application to the yellowfin tuna (Thunnus albacares) longlineCPUE data
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Incorporating spatial autocorrelation into the general linear modelwith an application to the yellowfin tuna (Thunnus albacares) longlineCPUE data

机译:将空间自相关合并到一般线性模型中,并应用于黄鳍金枪鱼(Thunnus albacares)延绳钓CPUE数据

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摘要

Catch-per-unit-effort (CPUE) data have often been used to obtain a relative index of the abundance of a fish stock by standardizing nominal CPUE using various statistical methods. The theory underlying most of these methods assumes the independence of the observed CPUEs. This assumption is invalid for a fish population because of their spatial autocorrelation. To overcome this problem, we incorporated spatial autocorrelation into the standard general linear model (GLM). We also incorporated into it a habitat-based model (HBM), to reflect, more effectively, the vertical distributions of tuna. As a case study, we fitted both the standard-GLM and spatial-GLM (with or without HBM) to the yellowfin tuna CPUE data of the Japanese longline fisheries in the Indian Ocean. Four distance models (Gaussian, exponential, linear and spherical) were examined for spatial autocorrelation. We found that the spatial-GLMs always produced the best goodness-of-fit to the data and gave more realistic estimates of the variances of the parameters, and that HBM-based GLMs always produced better goodness-of- fit to the data than those without. Of the four distance models, the Gaussian model performed the best. The point estimates of the relative indices of the abundance of yellowfin tuna differed slightly between standard and spatial GLMs, while their 95% confidence intervals from the spatial-GLMs were larger than those from the standard-GLM. Therefore, spatial-GLMs yield more robust estimates of the relative indices of the abundance of yellowfin tuna, especially when the nominal CPUEs are strongly spatially autocorrelated.
机译:通过使用各种统计方法对名义CPUE进行标准化,经常使用单位捕获量(CPUE)数据来获得鱼类种群数量的相对指数。这些方法中的大多数理论都假设所观察到的CPUE是独立的。由于鱼的空间自相关,因此该假设对鱼群无效。为了克服这个问题,我们将空间自相关合并到标准通用线性模型(GLM)中。我们还将基于栖息地的模型(HBM)纳入其中,以更有效地反映金枪鱼的垂直分布。作为案例研究,我们对印度洋日本延绳钓渔业的黄鳍金枪鱼CPUE数据进行了标准GLM和空间GLM(有或没有HBM)的拟合。检查了四个距离模型(高斯,指数,线性和球形)的空间自相关。我们发现,空间GLM总是对数据产生最佳拟合优度,并给出参数方差的更实际的估计,而基于HBM的GLM总是比数据产生更好的拟合优度。没有。在四个距离模型中,高斯模型表现最佳。在标准和空间GLM之间,黄鳍金枪鱼丰度相对指标的点估计值略有不同,而来自空间-GLM的95%置信区间大于来自标准-GLM的置信区间。因此,空间GLM对黄鳍金枪鱼丰度的相对指数产生更可靠的估计,尤其是当标称CPUE在空间上高度自相关时。

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