English

Normalizing Flows Across Dimensions

Machine Learning 2022-04-28 v1 Machine Learning

Abstract

Real-world data with underlying structure, such as pictures of faces, are hypothesized to lie on a low-dimensional manifold. This manifold hypothesis has motivated state-of-the-art generative algorithms that learn low-dimensional data representations. Unfortunately, a popular generative model, normalizing flows, cannot take advantage of this. Normalizing flows are based on successive variable transformations that are, by design, incapable of learning lower-dimensional representations. In this paper we introduce noisy injective flows (NIF), a generalization of normalizing flows that can go across dimensions. NIF explicitly map the latent space to a learnable manifold in a high-dimensional data space using injective transformations. We further employ an additive noise model to account for deviations from the manifold and identify a stochastic inverse of the generative process. Empirically, we demonstrate that a simple application of our method to existing flow architectures can significantly improve sample quality and yield separable data embeddings.

Keywords

Cite

@article{arxiv.2006.13070,
  title  = {Normalizing Flows Across Dimensions},
  author = {Edmond Cunningham and Renos Zabounidis and Abhinav Agrawal and Madalina Fiterau and Daniel Sheldon},
  journal= {arXiv preprint arXiv:2006.13070},
  year   = {2022}
}
R2 v1 2026-06-23T16:33:34.268Z