Flowification: Everything Is a Normalizing Flow

Abstract

The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension preserving) and that it monitors the amount by which it changes the likelihood of data points as samples are propagated along the network. Recently, multiple generalizations of normalizing flows have been introduced that relax these two conditions \citep{nielsen2020survae,huang2020augmented}. On the other hand, neural networks only perform a forward pass on the input, there is neither a notion of an inverse of a neural network nor is there one of its likelihood contribution. In this paper we argue that certain neural network architectures can be enriched with a stochastic inverse pass and that their likelihood contribution can be monitored in a way that they fall under the generalized notion of a normalizing flow mentioned above. We term this enrichment \emph{flowification}. We prove that neural networks only containing linear and convolutional layers and invertible activations such as LeakyReLU can be flowified and evaluate them in the generative setting on image datasets.

Cite

Text

Máté et al. "Flowification: Everything Is a Normalizing Flow." Neural Information Processing Systems, 2022.

Markdown

[Máté et al. "Flowification: Everything Is a Normalizing Flow." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/mate2022neurips-flowification/)

BibTeX

@inproceedings{mate2022neurips-flowification,
  title     = {{Flowification: Everything Is a Normalizing Flow}},
  author    = {Máté, Bálint and Klein, Samuel and Golling, Tobias and Fleuret, François},
  booktitle = {Neural Information Processing Systems},
  year      = {2022},
  url       = {https://mlanthology.org/neurips/2022/mate2022neurips-flowification/}
}