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首页> 外文期刊>International Journal of Geographical Information Science >A representativeness-directed approach to mitigate spatial bias in VGI for the predictive mapping of geographic phenomena
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A representativeness-directed approach to mitigate spatial bias in VGI for the predictive mapping of geographic phenomena

机译:减轻VGI中空间偏差的代表性导向方法,用于地理现象的预测映射

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摘要

Volunteered geographic information (VGI) contains valuable field observations that represent the spatial distribution of geographic phenomena. As such, it has the potential to provide regularly updated low-cost field samples for predictively mapping the spatial variations of geographic phenomena. The predictive mapping of geographic phenomena often requires representative samples for high mapping accuracy, but samples consisting of VGI observations are often not representative as they concentrate on specific geographic areas (i.e. spatial bias) due to the opportunistic nature of voluntary observation efforts. In this article, we propose a representativeness-directed approach to mitigate spatial bias in VGI for predictive mapping. The proposed approach defines and quantifies sample representativeness by comparing the probability distributions of sample locations and the mapping area in the environmental covariate space. Spatial bias is mitigated by weighting the sample locations to maximize their representativeness. The approach is evaluated using species habit suitability mapping as a case study. The results show that the accuracy of predictive mapping using weighted sample locations is higher than using unweighted sample locations. A positive relationship between sample representativeness and mapping accuracy is also observed, suggesting that sample representativeness is a valid indicator of predictive mapping accuracy. This approach mitigates spatial bias in VGI to improve predictive mapping accuracy.
机译:自愿性地理信息(VGI)包含代表地理现象空间分布的有价值的实地观察。这样,它就有可能提供定期更新的低成本野外采样,以预测性地绘制地理现象的空间变化。地理现象的预测性制图通常需要具有代表性的样本才能获得较高的制图准确性,但是由于自愿性观测工作的机会性质,由VGI观测组成的样本通常不具代表性,因为它们集中于特定的地理区域(即空间偏差)。在本文中,我们提出了一种具有代表性的方法,以减轻VGI中用于预测映射的空间偏差。所提出的方法通过比较环境协变量空间中样本位置和映射区域的概率分布来定义和量化样本代表性。通过对样本位置进行加权以使其代表性最大化,可以减轻空间偏差。该方法使用物种习性适合性作图作为案例研究进行评估。结果表明,使用加权样本位置的预测映射的准确性高于使用未加权样本位置的预测映射。还观察到样本代表性与制图准确性之间存在正相关关系,这表明样本代表性是预测性制图准确性的有效指标。这种方法减轻了VGI中的空间偏差,从而提高了预测映射的准确性。

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