Aligned Diffusion Schroedinger Bridges
Authors/Creators
- 1. ETH Zurich, IBM Research Zurich
- 2. EPFL
- 3. ETH Zurich
- 4. IBM Research Zurich
Description
We add the processed and prepared raw datasets for the D3PM dataset.
Paper Abstract
Diffusion Schrödinger bridges (DSB) have recently emerged as a powerful framework for recovering stochastic dynamics via their marginal observations at different time points. Despite numerous successful applications, existing algorithms for solving DSBs have so far failed to utilize the structure of aligned data, which naturally arises in many biological phenomena. In this paper, we propose a novel algorithmic framework that, for the first time, solves DSBs while respecting the data alignment. Our approach hinges on a combination of two decades-old ideas: The classical Schrödinger bridge theory and Doob’s h-transform. Compared to prior methods, our approach leads to a simpler training procedure with lower variance, which we further augment with principled regularization schemes. This ultimately leads to sizeable improvements across experiments on synthetic and real data, including the tasks of protein conformational changes and temporal evolution of cellular differentiation processes.
Files
Files
(1.7 GB)
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