Adjoint Schrödinger Bridge Sampler
–Neural Information Processing Systems
Computational methods for learning to sample from the Boltzmann distribution--where the target distribution is known only up to an unnormalized energy function--have advanced significantly recently. Due to the lack of explicit target samples, however, prior diffusion-based methods, known as, often require importance-weighted estimation or complicated learning processes.
Neural Information Processing Systems
Jun-10-2026, 16:48:24 GMT
- Technology: