Approximately half of the global population does not have access to the internet, even though digital connectivity can reduce poverty by revolutionizing economic development opportunities. Due to a lack of data, Mobile Network Operators and governments struggle to effectively determine if infrastructure investments are viable, especially in greenfield areas where demand is unknown. This leads to a lack of investment in network infrastructure, resulting in a phenomenon commonly referred to as the `digital divide`. In this paper we present a machine learning method that uses publicly available satellite imagery to predict telecoms demand metrics, including cell phone adoption and spending on mobile services, and apply the method to Malawi and Ethiopia. Our predictive machine learning approach consistently outperforms baseline models which use population density or nightlight luminosity, with an improvement in data variance prediction of at least 40%. The method is a starting point for developing more sophisticated predictive models of infrastructure demand using machine learning and publicly available satellite imagery. The evidence produced can help to better inform infrastructure investment and policy decisions.
翻译:由于缺乏数据,移动网络操作员和政府努力有效确定基础设施投资是否可行,特别是在需求不明的绿地地区,这导致网络基础设施缺乏投资,造成通常称为`数字鸿沟'的现象。本文介绍了一种机器学习方法,利用公开提供的卫星图像预测电信需求计量,包括手机的采用和移动服务支出,并将这种方法应用于马拉维和埃塞俄比亚。我们的预测机器学习方法一贯优于使用人口密度或夜光照明的基线模型,而数据差异预测则至少达到40%。这种方法是利用机器学习和公开提供的卫星图像开发更先进的基础设施需求预测模型的起点。产生的证据有助于更好地为基础设施的投资和政策决策提供信息。