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Building Normalizing Flows with Stochastic Interpolants

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57 Pith papers citing it
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abstract

A generative model based on a continuous-time normalizing flow between any pair of base and target probability densities is proposed. The velocity field of this flow is inferred from the probability current of a time-dependent density that interpolates between the base and the target in finite time. Unlike conventional normalizing flow inference methods based the maximum likelihood principle, which require costly backpropagation through ODE solvers, our interpolant approach leads to a simple quadratic loss for the velocity itself which is expressed in terms of expectations that are readily amenable to empirical estimation. The flow can be used to generate samples from either the base or target, and to estimate the likelihood at any time along the interpolant. In addition, the flow can be optimized to minimize the path length of the interpolant density, thereby paving the way for building optimal transport maps. In situations where the base is a Gaussian density, we also show that the velocity of our normalizing flow can also be used to construct a diffusion model to sample the target as well as estimate its score. However, our approach shows that we can bypass this diffusion completely and work at the level of the probability flow with greater simplicity, opening an avenue for methods based solely on ordinary differential equations as an alternative to those based on stochastic differential equations. Benchmarking on density estimation tasks illustrates that the learned flow can match and surpass conventional continuous flows at a fraction of the cost, and compares well with diffusions on image generation on CIFAR-10 and ImageNet $32\times32$. The method scales ab-initio ODE flows to previously unreachable image resolutions, demonstrated up to $128\times128$.

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  • abstract A generative model based on a continuous-time normalizing flow between any pair of base and target probability densities is proposed. The velocity field of this flow is inferred from the probability current of a time-dependent density that interpolates between the base and the target in finite time. Unlike conventional normalizing flow inference methods based the maximum likelihood principle, which require costly backpropagation through ODE solvers, our interpolant approach leads to a simple quadratic loss for the velocity itself which is expressed in terms of expectations that are readily ame

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representative citing papers

Generative Modeling with Flux Matching

cs.LG · 2026-05-08 · unverdicted · novelty 8.0

Flux Matching generalizes score-based generative modeling by using a weaker objective that admits infinitely many non-conservative vector fields with the data as stationary distribution, enabling new design choices beyond traditional score matching.

ReConText3D: Replay-based Continual Text-to-3D Generation

cs.CV · 2026-04-15 · conditional · novelty 8.0

ReConText3D is the first replay-memory framework for continual text-to-3D generation that prevents catastrophic forgetting on new textual categories while preserving quality on previously seen classes.

Mat\'ern Noise for Triangulation-Agnostic Flow Matching on Meshes

cs.GR · 2026-05-19 · unverdicted · novelty 7.0

Proposes discretized Matérn process noise for triangulation-agnostic flow matching on meshes with PoissonNet denoiser, tested on elastic states and humanoid poses for meshes exceeding one million triangles.

Sampling from Flow Language Models via Marginal-Conditioned Bridges

cs.LG · 2026-05-13 · unverdicted · novelty 7.0

Marginal-conditioned bridges enable training-free sampling from Flow Language Models by drawing clean one-hot endpoints from factorized posteriors and using Ornstein-Uhlenbeck bridges, preserving token marginals and reducing denoising error versus conditional-mean bridges.

Flow Matching on Symmetric Spaces

cs.LG · 2026-05-05 · unverdicted · novelty 7.0

A general framework reduces flow matching on symmetric spaces to flow matching on a Lie algebra subspace, linearizing geodesics.

Exploring Cross-Modal Flows for Few-Shot Learning

cs.CV · 2025-10-16 · unverdicted · novelty 7.0

FMA introduces flow matching for multi-step cross-modal feature alignment in few-shot learning, using fixed coupling, noise augmentation, and early-stopping to outperform one-step PEFT methods.

WavFlow: Audio Generation in Waveform Space

cs.SD · 2026-05-18 · conditional · novelty 6.0

WavFlow performs direct waveform audio generation via flow matching on 2D token grids from raw patches plus amplitude lifting, matching latent-based methods on VGGSound and AudioCaps without intermediate compression.

citing papers explorer

Showing 12 of 12 citing papers after filters.

  • Generative Modeling with Flux Matching cs.LG · 2026-05-08 · unverdicted · none · ref 2 · internal anchor

    Flux Matching generalizes score-based generative modeling by using a weaker objective that admits infinitely many non-conservative vector fields with the data as stationary distribution, enabling new design choices beyond traditional score matching.

  • Sampling from Flow Language Models via Marginal-Conditioned Bridges cs.LG · 2026-05-13 · unverdicted · none · ref 3 · internal anchor

    Marginal-conditioned bridges enable training-free sampling from Flow Language Models by drawing clean one-hot endpoints from factorized posteriors and using Ornstein-Uhlenbeck bridges, preserving token marginals and reducing denoising error versus conditional-mean bridges.

  • Zero-couplings of infinite measures with cyclically monotone support and multivariate regular variation math.PR · 2026-05-11 · unverdicted · none · ref 1 · internal anchor

    Existence and uniqueness of cyclically monotone zero-couplings are established for arbitrary pairs of infinite measures in M_0(R^d) under a Hausdorff-dimension condition, with the tail limit of such couplings for regularly varying distributions coinciding with the unique proper zero-coupling of the

  • Physically Grounded 3D Generative Reconstruction under Hand Occlusion using Proprioception and Multi-Contact Touch cs.CV · 2026-04-10 · unverdicted · none · ref 1 · internal anchor

    A conditional diffusion model using proprioception and multi-contact touch produces metric-scale, physically consistent 3D object reconstructions under hand occlusion.

  • SDFlow: Similarity-Driven Flow Matching for Time Series Generation cs.AI · 2026-05-07 · unverdicted · none · ref 1 · 2 links · internal anchor

    SDFlow learns a global transport map via similarity-driven flow matching in VQ latent space, using low-rank manifold decomposition and a categorical posterior to handle discreteness, yielding SOTA long-horizon performance and inference speedups.

  • Fisher Decorator: Refining Flow Policy via a Local Transport Map cs.LG · 2026-04-20 · unverdicted · none · ref 29 · internal anchor

    Fisher Decorator refines flow policies in offline RL via a local transport map and Fisher-matrix quadratic approximation of the KL constraint, yielding controllable error near the optimum and SOTA benchmark results.

  • Mean Flows for One-step Generative Modeling cs.LG · 2025-05-19 · unverdicted · none · ref 1 · internal anchor

    MeanFlow uses a derived identity between average and instantaneous velocities to train one-step flow models, achieving FID 3.43 on ImageNet 256x256 with 1-NFE from scratch.

  • MAGI-1: Autoregressive Video Generation at Scale cs.CV · 2025-05-19 · unverdicted · none · ref 2 · internal anchor

    MAGI-1 is a 24B-parameter autoregressive video world model that predicts denoised frame chunks sequentially with increasing noise to enable causal, scalable, streaming generation up to 4M token contexts.

  • DanceGRPO: Unleashing GRPO on Visual Generation cs.CV · 2025-05-12 · unverdicted · none · ref 32 · internal anchor

    DanceGRPO applies GRPO to visual generation tasks to achieve stable policy optimization across diffusion models, rectified flows, multiple tasks, and diverse reward models, outperforming prior RL methods.

  • CaloArt: Large-Patch x-Prediction Diffusion Transformers for High-Granularity Calorimeter Shower Generation physics.ins-det · 2026-05-12 · unverdicted · none · ref 31 · internal anchor

    CaloArt achieves top FPD, high-level, and classifier metrics on CaloChallenge datasets 2 and 3 while keeping single-GPU generation at 9-11 ms per shower by combining large-patch tokenization, x-prediction, and conditional flow matching.

  • SubFlow: Sub-mode Conditioned Flow Matching for Diverse One-Step Generation cs.LG · 2026-04-14 · unverdicted · none · ref 1 · internal anchor

    SubFlow restores full mode coverage in one-step flow matching by conditioning on sub-modes from semantic clustering, yielding higher diversity on ImageNet-256 while preserving FID.

  • One-Step Generative Modeling via Wasserstein Gradient Flows cs.LG · 2026-05-12 · unreviewed · ref 1 · internal anchor