Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

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.

Ahmed Aloui, Junyi Liao, Ali Hasan, Jose Blanchet, Vahid Tarokh• 2026

Related benchmarks

TaskDatasetResultRank
MaxCutBarabási–Albert m = 2 (test)
Energy-10.02
16
MaxCutErdős–Rényi p = 0.1 (test)
Energy-142.5
16
Vertex CoverBarabási–Albert BA256 (m = 2)
Best Cover Size140
8
Vertex CoverBarabási–Albert BA512 (m = 2)
Best VC Size316
8
Vertex CoverBarabási–Albert BA1024 (m = 2)
Best Solution Size655
8
Vertex CoverBarabási–Albert BA64 m = 2
Best Cover Size31
8
Vertex CoverErdős–Rényi ER64 (|E| = 2.5N)
Energy0.657
4
Vertex CoverErdős–Rényi ER256 (|E| = 2.5N)
Energy0.685
4
Vertex CoverErdős–Rényi ER512 (|E| = 2.5N)
Energy0.727
4
Vertex CoverErdős–Rényi ER1024 (|E| = 2.5N)
Energy0.759
4
Showing 10 of 10 rows

Other info

Follow for update