An optimal control perspective on diffusion-based generative modeling
About
We establish a connection between stochastic optimal control and generative models based on stochastic differential equations (SDEs), such as recently developed diffusion probabilistic models. In particular, we derive a Hamilton-Jacobi-Bellman equation that governs the evolution of the log-densities of the underlying SDE marginals. This perspective allows to transfer methods from optimal control theory to generative modeling. First, we show that the evidence lower bound is a direct consequence of the well-known verification theorem from control theory. Further, we can formulate diffusion-based generative modeling as a minimization of the Kullback-Leibler divergence between suitable measures in path space. Finally, we develop a novel diffusion-based method for sampling from unnormalized densities -- a problem frequently occurring in statistics and computational sciences. We demonstrate that our time-reversed diffusion sampler (DIS) can outperform other diffusion-based sampling approaches on multiple numerical examples.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Unconditional modeling | 25GMM d = 2 | Delta Log Z1.125 | 30 | |
| Unconditional modeling | Funnel d = 10 | Delta log Z0.839 | 30 | |
| Unconditional modeling | Manywell d = 32 | Δ log Z10.52 | 29 | |
| Unconditional modeling | Log-Gaussian Cox process d = 1600 | Delta log Z299.8 | 13 |