Conditional Permutation Invariant Flows

Abstract

We present a conditional generative probabilistic model of set-valued data with a tractable log density. This model is a continuous normalizing flow governed by permutation equivariant dynamics. These dynamics are driven by a learnable per-set-element term and pairwise interactions, both parametrized by deep neural networks. We illustrate the utility of this model via applications including (1) complex traffic scene generation conditioned on visually specified map information, and (2) object bounding box generation conditioned directly on images. We train our model by maximizing the expected likelihood of labeled conditional data under our flow, with the aid of a penalty that ensures the dynamics are smooth and hence efficiently solvable. Our method significantly outperforms non-permutation invariant baselines in terms of log likelihood and domain-specific metrics (offroad, collision, and combined infractions), yielding realistic samples that are difficult to distinguish from data.

Cite

Text

Zwartsenberg et al. "Conditional Permutation Invariant Flows." Transactions on Machine Learning Research, 2023.

Markdown

[Zwartsenberg et al. "Conditional Permutation Invariant Flows." Transactions on Machine Learning Research, 2023.](https://mlanthology.org/tmlr/2023/zwartsenberg2023tmlr-conditional/)

BibTeX

@article{zwartsenberg2023tmlr-conditional,
  title     = {{Conditional Permutation Invariant Flows}},
  author    = {Zwartsenberg, Berend and Scibior, Adam and Niedoba, Matthew and Lioutas, Vasileios and Sefas, Justice and Liu, Yunpeng and Dabiri, Setareh and Lavington, Jonathan Wilder and Campbell, Trevor and Wood, Frank},
  journal   = {Transactions on Machine Learning Research},
  year      = {2023},
  url       = {https://mlanthology.org/tmlr/2023/zwartsenberg2023tmlr-conditional/}
}