Private Agent-Based Modeling (2404.12983v1)
Abstract: The practical utility of agent-based models in decision-making relies on their capacity to accurately replicate populations while seamlessly integrating real-world data streams. Yet, the incorporation of such data poses significant challenges due to privacy concerns. To address this issue, we introduce a paradigm for private agent-based modeling wherein the simulation, calibration, and analysis of agent-based models can be achieved without centralizing the agents attributes or interactions. The key insight is to leverage techniques from secure multi-party computation to design protocols for decentralized computation in agent-based models. This ensures the confidentiality of the simulated agents without compromising on simulation accuracy. We showcase our protocols on a case study with an epidemiological simulation comprising over 150,000 agents. We believe this is a critical step towards deploying agent-based models to real-world applications.
- Ayush Chopra (24 papers)
- Arnau Quera-Bofarull (9 papers)
- Nurullah Giray-Kuru (2 papers)
- Michael Wooldridge (59 papers)
- Ramesh Raskar (123 papers)