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Contextualizing local-scale point sample data using global-scale spatial datasets: Lessons learnt from the analysis of large-scale land acquisitions

机译:使用全球规模的空间数据集将地方尺度的点样数据关联起来:从大规模土地征用分析中学到的教训

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This paper examines how the geospatial accuracy of samples and sample size influence conclusions from geospatial analyses. It does so using the example of a study investigating the global phenomenon of large-scale land acquisitions and the socio-ecological characteristics of the areas they target. First, we analysed land, deal datasets of varying geospatial accuracy and varying sizes and compared the results in terms of land cover, population density, and two indicators for agricultural potential: yield gap and availability of uncultivated land that is suitable for rainfed agriculture. We found that an increase in geospatial accuracy led to a substantial and greater change in conclusions about the land cover types targeted than an increase in sample size, suggesting that using a sample of higher geospatial accuracy does more to improve results than using a larger sample. The same finding emerged for population density, yield gap, and the availability of uncultivated land suitable for rainfed agriculture. Furthermore, the statistical median proved to be more consistent than the mean when comparing the descriptive statistics for datasets of different geospatial accuracy. Second, we analysed effects of geospatial accuracy on estimations regarding the potential for advancing agricultural development in target contexts. Our results show that the target contexts of the majority of land deals in our sample whose geolocation is known with a high level of accuracy contain smaller amounts of suitable, but uncultivated land than regional- and national-scale averages suggest. Consequently, the more target contexts vary within a country, the more detailed the spatial scale of analysis has to be in order to draw meaningful conclusions about the phenomena under investigation. We therefore advise against using national-scale statistics to approximate or characterize phenomena that have a local-scale impact, particularly if key indicators vary widely within a country. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文研究了样本的地理空间准确性和样本大小如何影响地理空间分析的结论。这样做是通过一个研究示例来进行的,该研究调查了全球大规模征地现象及其目标地区的社会生态特征。首先,我们分析了具有不同地理空间精度和大小的土地,交易数据集,并比较了土地覆盖率,人口密度和两个农业潜力指标的结果:单产差距和适合雨养农业的未耕地的可用性。我们发现,地理空间精度的提高导致目标土地覆盖类型结论的实质性变化比样本量的增加大得多,这表明与使用较大的样本相比,使用更高的地理空间精度的样本可以更好地改善结果。在人口密度,单产差距和适合雨养农业的未耕地的可获得性方面也出现了同样的发现。此外,在比较具有不同地理空间精度的数据集的描述性统计数据时,统计中位数被证明比平均值更加一致。其次,我们分析了地理空间精度对目标环境下促进农业发展潜力的估计的影响。我们的结果表明,在我们的样本中,其地理位置非常准确的已知大多数土地交易的目标环境包含的区域合适的,但未经耕种的土地数量要少于区域和国家规模的平均值。因此,一个国家内目标环境的差异越大,分析的空间规模就必须越详细,以得出关于所调查现象的有意义的结论。因此,我们建议不要使用国家规模的统计数据来近似或刻画对当地有影响的现象,尤其是在一个国家内关键指标差异很大的情况下。 (C)2016 Elsevier Ltd.保留所有权利。

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