TY - GEN
T1 - Achievement and Fragility of Long-Term Equitability
AU - Simonetto, Andrea
AU - Notarnicola, Ivano
N1 - Publisher Copyright:
© 2022 ACM.
PY - 2022/7/26
Y1 - 2022/7/26
N2 - Equipping current decision-making tools with notions of fairness, equitability, or other ethically motivated outcomes, is one of the top priorities in recent research efforts in machine learning, AI, and optimization. In this paper, we investigate how to allocate limited resources to locally interacting communities in a way to maximize a pertinent notion of equitability. In particular, we look at the dynamic setting where the allocation is repeated across multiple periods (e.g., yearly), the local communities evolve in the meantime (driven by the provided allocation), and the allocations are modulated by feedback coming from the communities themselves. We employ recent mathematical tools stemming from data-driven feedback online optimization, by which communities can learn their (possibly unknown) evolution, satisfaction, as well as they can share information with the deciding bodies. We design dynamic policies that converge to an allocation that maximize equitability in the long term. We further demonstrate our model and methodology with realistic examples of healthcare and education subsidies design in Sub-Saharian countries. One of the key empirical takeaways from our setting is that long-Term equitability is fragile, in the sense that it can be easily lost when deciding bodies weigh in other factors (e.g., equality in allocation) in the allocation strategy. Moreover, a naive compromise, while not providing significant advantage to the communities, can promote inequality in social outcomes.
AB - Equipping current decision-making tools with notions of fairness, equitability, or other ethically motivated outcomes, is one of the top priorities in recent research efforts in machine learning, AI, and optimization. In this paper, we investigate how to allocate limited resources to locally interacting communities in a way to maximize a pertinent notion of equitability. In particular, we look at the dynamic setting where the allocation is repeated across multiple periods (e.g., yearly), the local communities evolve in the meantime (driven by the provided allocation), and the allocations are modulated by feedback coming from the communities themselves. We employ recent mathematical tools stemming from data-driven feedback online optimization, by which communities can learn their (possibly unknown) evolution, satisfaction, as well as they can share information with the deciding bodies. We design dynamic policies that converge to an allocation that maximize equitability in the long term. We further demonstrate our model and methodology with realistic examples of healthcare and education subsidies design in Sub-Saharian countries. One of the key empirical takeaways from our setting is that long-Term equitability is fragile, in the sense that it can be easily lost when deciding bodies weigh in other factors (e.g., equality in allocation) in the allocation strategy. Moreover, a naive compromise, while not providing significant advantage to the communities, can promote inequality in social outcomes.
KW - dynamical systems
KW - equitability
KW - fairness
KW - optimization
KW - subsidies design
U2 - 10.1145/3514094.3534132
DO - 10.1145/3514094.3534132
M3 - Conference contribution
AN - SCOPUS:85137168470
T3 - AIES 2022 - Proceedings of the 2022 AAAI/ACM Conference on AI, Ethics, and Society
SP - 675
EP - 685
BT - AIES 2022 - Proceedings of the 2022 AAAI/ACM Conference on AI, Ethics, and Society
PB - Association for Computing Machinery, Inc
T2 - 5th AAAI/ACM Conference on Artificial Intelligence, Ethics, and Society, AIES 2022
Y2 - 1 August 2022 through 3 August 2022
ER -