Branching Flows: Discrete, Continuous, and Manifold Flow Matching with Splits and Deletions
arXiv stat.ML / 4/28/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces “Branching Flows,” a generative modeling framework that transports a simple distribution to the data distribution using ideas from diffusion and flow matching.
- Unlike standard flow matching/diffusion setups that assume a fixed-size state, Branching Flows evolves elements over a learned forest of binary trees where nodes can branch or die stochastically, enabling control over sequence length during generation.
- The method is shown to compose with a wide range of flow-matching base processes across discrete sets, continuous Euclidean spaces, smooth manifolds, and multimodal product spaces.
- Experiments demonstrate the approach in multiple settings—small-molecule generation, antibody sequence generation, and protein backbone generation—highlighting stable learning objectives and new generative capabilities.
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