Proposes KIPLMC algorithms based on joint parameter-latent diffusions with nonasymptotic Wasserstein-2 rates under strong concavity, claiming improved dimension dependence over prior Langevin methods.
Langevin diffusions and metropolis-hastings algorithms.Method- ology and computing in applied probability, 4(4):337–357
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Kinetic Interacting Particle Langevin Monte Carlo
Proposes KIPLMC algorithms based on joint parameter-latent diffusions with nonasymptotic Wasserstein-2 rates under strong concavity, claiming improved dimension dependence over prior Langevin methods.