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The Application of a Geographically Weighted Principal Component Analysis for Exploring Twenty-three Years of Goat Population Change across Mongolia

机译:地理加权主要成分分析在蒙古探索二十三年的山羊人口变化中的应用

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摘要

The dzud are extreme weather events in Mongolia of deep snow, severe cold, or other conditions that render forage unavailable or inaccessible, which in turn results in extensive livestock deaths. Mongolia is economically vulnerable to extreme events due to an increase in nonprofessional herders and the livestock population, brought about by a deregularized industry. Thus, it is hugely informative to try to understand the spatial and temporal trends of livestock population change. To this end, annual livestock census data are exploited and a geographically weighted principal component analysis (GWPCA) is applied to goat data recorded from 1990 to 2012 in 341 regions. This application of GWPCA to temporal data is novel and is able to account for both temporal and spatial patterns in goat population change. Furthermore, the GWPCA methodology is extended to simultaneously optimize the number of components to retain and the kernel bandwidth. In doing so, this study not only advances the GWPCA method but provides a useful insight into the spatiotemporal variations of the Mongolian goat population.
机译:Dzud是蒙古深雪的极端天气事件,严重感冒或其他条件,饲料不可用或无法进入,这反过来导致广泛的牲畜死亡。由于非专业牧民和牲畜种群增加,蒙古在经济上容易受到极端事件的影响。因此,试图了解牲畜人口变化的空间和时间趋势是非常丰富的。为此,利用年度牲畜人口普查数据,并将地理加权主成分分析(GWPCA)应用于341个地区的1990年至2012年记录的山羊数据。 GWPCA对时间数据的这种应用是新颖的,并且能够考虑山羊种群变化中的时间和空间模式。此外,扩展了GWPCA方法以同时优化要保留的组件数量和内核带宽。在这样做时,这项研究不仅可以提高GWPCA方法,而是对蒙古山羊人口的时空变化提供了有益的见解。

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