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Better coverage, better outcomes? Mapping mobile network data to official statistics using satellite imagery and radio propagation modelling

机译:更好的报道,更好的结果? 使用卫星图像和无线电传播建模将移动网络数据映射到官方统计数据

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Mobile sensing data has become a popular data source for geo-spatial analysis, however, mapping it accurately to other sources of information such as statistical data remains a challenge. Popular mapping approaches such as point allocation or voronoi tessellation provide only crude approximations of the mobile network coverage as they do not consider holes, overlaps and within-cell heterogeneity. More elaborate mapping schemes often require additional proprietary data operators are highly reluctant to share. In this paper, I use human settlement information extracted from publicly available satellite imagery in combination with stochastic radio propagation modelling techniques to account for that. I show in a simulation study and a real-world application on unemployment estimates in Senegal that better coverage approximations do not necessarily lead to better outcome predictions.
机译:移动感测数据已成为地理空间分析的流行数据源,但是,准确地将其映射到其他信息源,例如统计数据仍然是一个挑战。 流行的映射方法,如点分配或voronoi镶嵌,只提供移动网络覆盖的粗略近似,因为它们不考虑孔,重叠和细胞内的异质性。 更精细的映射方案通常需要额外的专有数据运营商非常不愿意分享。 在本文中,我使用从公共可用卫星图像中提取的人性定居点信息与随机无线电传播建模技术的组合来解释这一点。 我展示了一个模拟研究和现实世界申请塞内加尔的失业率估计,更好的覆盖率近似并不一定导致更好的结果预测。

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