Fast Rank-1 Lattice Targeted Sampling for Black-box Optimization
–Neural Information Processing Systems
Black-box optimization has gained great attention for its success in recent applications. However, scaling up to high-dimensional problems with good query efficiency remains challenging. This paper proposes a novel Rank-1 Lattice Targeted Sampling (RLTS) technique to address this issue. Our RLTS benefits from random rank-1 lattice Quasi-Monte Carlo, which enables us to perform fast local exact Gaussian processes (GP) training and inference with O(nlogn)complexity w.r.t.
Neural Information Processing Systems
Apr-25-2026, 20:19:20 GMT