Score-based Metropolis-Hastings for Fractional Langevin Algorithms
About
Sampling from heavy-tailed and multimodal distributions is challenging when neither the target density nor the proposal density can be evaluated, as in $\alpha$-stable L\'evy-driven fractional Langevin algorithms. While the target distribution can be estimated from data via score-based or energy-based models, the $\alpha$-stable proposal density and its score are generally unavailable, rendering classical density-based Metropolis--Hastings (MH) corrections impractical. Consequently, existing fractional Langevin methods operate in an unadjusted regime and can exhibit substantial finite-time errors and poor empirical control of tail behavior. We introduce the Metropolis-Adjusted Fractional Langevin Algorithm (MAFLA), an MH-inspired, fully score-based correction mechanism. MAFLA employs designed proxies for fractional proposal score gradients under isotropic symmetric $\alpha$-stable noise and learns an acceptance function via Score Balance Matching. We empirically illustrate the strong performance of MAFLA on a series of tasks including combinatorial optimization problems where the method significantly improves finite time sampling accuracy over unadjusted fractional Langevin dynamics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| MaxCut | Barabási–Albert m = 2 (test) | Energy-10.02 | 16 | |
| MaxCut | Erdős–Rényi p = 0.1 (test) | Energy-142.5 | 16 | |
| Vertex Cover | Barabási–Albert BA256 (m = 2) | Best Cover Size140 | 8 | |
| Vertex Cover | Barabási–Albert BA512 (m = 2) | Best VC Size316 | 8 | |
| Vertex Cover | Barabási–Albert BA1024 (m = 2) | Best Solution Size655 | 8 | |
| Vertex Cover | Barabási–Albert BA64 m = 2 | Best Cover Size31 | 8 | |
| Vertex Cover | Erdős–Rényi ER64 (|E| = 2.5N) | Energy0.657 | 4 | |
| Vertex Cover | Erdős–Rényi ER256 (|E| = 2.5N) | Energy0.685 | 4 | |
| Vertex Cover | Erdős–Rényi ER512 (|E| = 2.5N) | Energy0.727 | 4 | |
| Vertex Cover | Erdős–Rényi ER1024 (|E| = 2.5N) | Energy0.759 | 4 |