AI RESEARCH
Analytic Bridge Diffusions for Controlled Path Generation
arXiv CS.LG
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ArXi:2605.02961v1 Announce Type: new Most modern bridge-diffusion methods achieve finite-time transport by specifying an interpolation, Schr\"odinger-bridge, or stochastic-control objective and then learning the associated score or drift field with a neural network. In contrast, we identify a restricted but sufficiently broad and analytically solvable class in which the score, intermediate marginals, and protocol gradients are available in closed form without inner stochastic simulation loops and without neural networks in the optimization loop.