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首页> 外文期刊>The American Economic Review: Insights >Using Neural Networks to Predict Microspatial Economic Growth
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Using Neural Networks to Predict Microspatial Economic Growth

机译:使用神经网络预测微空间经济增长

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摘要

We apply deep learning to daytime satellite imagery to predict changes in income and population at high spatial resolution in US data. For grid cells with lateral dimensions of 1.2 km and 2.4 km (where the average US county has dimension of 51.9 km), our model predictions achieve R~2 values of 0.85 to 0.91 in levels, which far exceed the accuracy of existing models, and 0.32 to 0.46 in decadal changes, which have no counterpart in the literature and are 3-4 times larger than for commonly used nighttime lights. Our network has wide application for analyzing localized shocks.
机译:我们深度学习适用于白天的卫星收入和意象来预测变化人口在美国高空间分辨率的数据。网格细胞横向尺寸为1.2公里和2.4公里(平均美国县尺寸51.9公里),我们的模型预测实现R ~ 2值0.85至0.91的水平,这远远超过现有模型的准确性,和0.32 - 0.46年代际变化没有对应的文献中,3 - 4倍比常用的夜间灯。分析局部冲击。

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