Mapping Philippine Poverty using Machine Learning, Satellite Imagery, and Crowd-sourced Geospatial Information
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Updated
Nov 21, 2022 - Jupyter Notebook
Mapping Philippine Poverty using Machine Learning, Satellite Imagery, and Crowd-sourced Geospatial Information
poverty prediction and analysis
Data and code repository from "Mapping urban socioeconomic inequalities in developing countries through Facebook advertising data"
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