Milusheva Sveta
World Bank's Development Impact Evaluation Group, part of the World Bank's Development Economics Vice-presidency (DEC).
World Bank Econ Rev. 2020 Feb;34(Suppl 1):S26-S34. doi: 10.1093/wber/lhz036. Epub 2019 Dec 3.
Short-term human mobility has important health consequences, but measuring short-term movement using survey data is difficult and costly, and use of mobile phone data to study short-term movement is only possible in locations that can access the data. Combining several accessible data sources, Senegal is used as a case study to predict short-term movement within the country. The focus is on two main drivers of movement-economic and social-which explain almost 70 percent of the variation in short-term movement. Comparing real and predicted short-term movement to measure the impact of population movement on the spread of malaria in Senegal, the predictions generated by the model provide estimates for the effect that are not significantly different from the estimates using the real data. Given that the data used in this paper are often accessible in other country settings, this paper demonstrates how predictive modeling can be used by policy makers to estimate short-term mobility.
短期人口流动会产生重要的健康影响,但利用调查数据来衡量短期流动既困难又昂贵,而且只有在能够获取手机数据的地区才能使用手机数据来研究短期流动。通过整合多个可获取的数据源,以塞内加尔为案例研究来预测该国境内的短期流动。重点关注两个主要的流动驱动因素——经济因素和社会因素,这两个因素解释了近70%的短期流动变化。通过比较实际和预测的短期流动情况来衡量人口流动对塞内加尔疟疾传播的影响,该模型生成的预测结果所提供的影响估计值与使用实际数据得出的估计值并无显著差异。鉴于本文所使用的数据在其他国家环境中通常也可获取,本文展示了政策制定者如何利用预测模型来估计短期人口流动情况。