The pursuit of robust and stable generative models continues to be a central challenge. A recent theoretical advance introduces a novel family of models, termed Gradient Flow Drifting generative models, offering a unifying mathematical framework.
Unifying Generative Dynamics: From Drifting to Gradient Flow
This work reveals a precise mathematical framework that equates the recently proposed Drifting Model with the Wasserstein gradient flow of the forward KL divergence, particularly when densities are approximated via kernel density estimation (KDE). The core insight is that the drifting field in these models directly corresponds to the particle velocity field of the Wasserstein-2 gradient flow of $KL(q|p)$ with KDE-approximated densities, differing only by a bandwidth-squared scaling factor. This equivalence broadens the scope of Gradient Flow Drifting generative models to include MMD-based generators as special cases, arising from Wasserstein gradient flows of various divergences under KDE approximation.