Publications
Publications
- 2024
- Proceedings of the International Conference on Artificial Intelligence and Statistics (AISTATS)
Learning Under Random Distributional Shifts
By: Kirk Bansak, Elisabeth Paulson and Dominik Rothenhäusler
Abstract
Algorithmic assignment of refugees and asylum seekers to locations within host
countries has gained attention in recent years, with implementations in the U.S.
and Switzerland. These approaches use data on past arrivals to generate machine
learning models that can be used (along with assignment algorithms) to match
families to locations, with the goal of maximizing a policy-relevant integration outcome such as employment status after a certain duration. Existing implementations
and research train models to predict the policy outcome directly, and use these
predictions in the assignment procedure. However, the merits of this approach,
particularly in non-stationary settings, has not been previously explored. This study
proposes and compares three different modeling strategies: the standard approach
described above, an approach that uses newer data and proxy outcomes, and a
hybrid approach. We show that the hybrid approach is robust to both distribution
shift and weak proxy relationships—the failure points of the other two methods,
respectively. We compare these approaches empirically using data on asylum
seekers in the Netherlands. Surprisingly, we find that both the proxy and hybrid
approaches out-perform the standard approach in practice. These insights support
the development of a real-world recommendation tool currently used by NGOs and
government agencies.
Keywords
Citation
Bansak, Kirk, Elisabeth Paulson, and Dominik Rothenhäusler. "Learning Under Random Distributional Shifts." Proceedings of the International Conference on Artificial Intelligence and Statistics (AISTATS) 27th (2024).