BO4Mob: Bayesian Optimization Benchmarks for High-Dimensional Urban Mobility Problem
–Neural Information Processing Systems
We introduce BO4Mob, a new benchmark framework for high-dimensional Bayesian Optimization (BO), driven by the challenge of origin-destination (OD) travel demand estimation in large urban road networks. Estimating OD travel demand from limited traffic sensor data is a difficult inverse optimization problem, particularly in real-world, large-scale transportation networks. This problem involves optimizing over high-dimensional continuous spaces where each objective evaluation is computationally expensive, stochastic, and non-differentiable. BO4Mob comprises five scenarios based on real-world San Jose, CA road networks, with input dimensions scaling up to 10,100. These scenarios utilize high-resolution, open-source traffic simulations that incorporate realistic nonlinear and stochastic dynamics. We demonstrate the benchmark's utility by evaluating five optimization methods: three state-of-the-art BO algorithms and two non-BO baselines. This benchmark is designed to support both the development of scalable optimization algorithms and their application for the design of data-driven urban mobility models, including high-resolution digital twins of metropolitan road networks.
Neural Information Processing Systems
Jun-11-2026, 01:02:26 GMT
- Country:
- North America > United States > California > Santa Clara County > San Jose (0.27)
- Industry:
- Transportation
- Infrastructure & Services (1.00)
- Ground > Road (1.00)
- Transportation
- Technology: