Davisy/Financial-Inclusion-in-Africa-App
A Data science app to predict who in Africa is most likely to have a bank account?
This app helps researchers, policymakers, or financial institutions understand banking access across Africa. You input demographic and socioeconomic data, and it predicts the likelihood of individuals having a bank account. This tool is ideal for anyone working on economic development, financial inclusion strategies, or market analysis in African regions.
No commits in the last 6 months.
Use this if you need to quickly assess which populations in Africa are more or less likely to have bank accounts based on various personal characteristics.
Not ideal if you require a global banking inclusion model or need to predict specific banking product adoption rather than just account ownership.
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Last pushed
Aug 24, 2022
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