LGAICYApr 8, 2022

Interpretable AI for policy-making in pandemics

arXiv:2204.04256v211 citationsh-index: 26
AI Analysis

This work addresses the need for trustable and analyzable AI-driven policies in pandemic management, offering a solution to the trade-off between health and economic impacts.

The paper tackles the problem of generating effective pandemic containment policies by developing an interpretable AI approach that combines reinforcement learning with evolutionary computation, achieving significantly better performance in simulated scenarios than previous work and government policies.

Since the first wave of the COVID-19 pandemic, governments have applied restrictions in order to slow down its spreading. However, creating such policies is hard, especially because the government needs to trade-off the spreading of the pandemic with the economic losses. For this reason, several works have applied machine learning techniques, often with the help of special-purpose simulators, to generate policies that were more effective than the ones obtained by governments. While the performance of such approaches are promising, they suffer from a fundamental issue: since such approaches are based on black-box machine learning, their real-world applicability is limited, because these policies cannot be analyzed, nor tested, and thus they are not trustable. In this work, we employ a recently developed hybrid approach, which combines reinforcement learning with evolutionary computation, for the generation of interpretable policies for containing the pandemic. These policies, trained on an existing simulator, aim to reduce the spreading of the pandemic while minimizing the economic losses. Our results show that our approach is able to find solutions that are extremely simple, yet very powerful. In fact, our approach has significantly better performance (in simulated scenarios) than both previous work and government policies.

Foundations

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