Enabling Humanitarian Applications with Targeted Differential Privacy
Nitin Kohli, Joshua Blumenstock

TL;DR
This paper introduces a tailored differential privacy approach for humanitarian applications, balancing individual privacy with decision accuracy, demonstrated through real-world case studies in Togo and Nigeria.
Contribution
It adapts differential privacy for decision-making contexts, providing granular privacy control and analyzing privacy-accuracy tradeoffs in humanitarian data use.
Findings
Stronger privacy reduces predictive accuracy.
Privacy guarantees impact program effectiveness.
Empirical analysis of privacy-utility tradeoffs.
Abstract
The proliferation of mobile phones in low- and middle-income countries has suddenly and dramatically increased the extent to which the world's poorest and most vulnerable populations can be observed and tracked by governments and corporations. Millions of historically "off the grid" individuals are now passively generating digital data; these data, in turn, are being used to make life-altering decisions about those individuals -- including whether or not they receive government benefits, and whether they qualify for a consumer loan. This paper develops an approach to implementing algorithmic decisions based on personal data, while also providing formal privacy guarantees to data subjects. The approach adapts differential privacy to applications that require decisions about individuals, and gives decision makers granular control over the level of privacy guaranteed to data subjects. We…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
