Timezone: »
Poster
PFGM++: Unlocking the Potential of Physics-Inspired Generative Models
Yilun Xu · Ziming Liu · Yonglong Tian · Shangyuan Tong · Max Tegmark · Tommi Jaakkola
We introduce a new family of physics-inspired generative models termed PFGM++ that unifies diffusion models and Poisson Flow Generative Models (PFGM). These models realize generative trajectories for N dimensional data by embedding paths in N+D dimensional space while still controlling the progression with a simple scalar norm of the D additional variables. The new models reduce to PFGM when D=1 and to diffusion models when D$\to\infty$. The flexibility of choosing D allows us to trade off robustness against rigidity as increasing D results in more concentrated coupling between the data and the additional variable norms. We dispense with the biased large batch field targets used in PFGM and instead provide an unbiased perturbation-based objective similar to diffusion models. To explore different choices of D, we provide a direct alignment method for transferring well-tuned hyperparameters from diffusion models (D$\to\infty$) to any finite D values. Our experiments show that models with finite D can be superior to previous state-of-the-art diffusion models on CIFAR-10/FFHQ 64$\times$64 datasets/LSUN Churches 256$\times$256, with median Ds. In class-conditional setting, D=2048 yields current state-of-the-art FID of 1.74 on CIFAR-10 without additional training. Furthermore, we demonstrate that models with smaller $D$ exhibit improved robustness against modeling errors. Code is available at https://github.com/Newbeeer/pfgmpp
Author Information
Yilun Xu (MIT)
Ziming Liu (MIT)
Yonglong Tian (Google)
Shangyuan Tong (Massachusetts Institute of Technology)
Max Tegmark (MIT)
Tommi Jaakkola (MIT)
More from the Same Authors
-
2023 : Optimizing protein fitness using Bi-level Gibbs sampling with Graph-based Smoothing »
Andrew Kirjner · Jason Yim · Raman Samusevich · Tommi Jaakkola · Regina Barzilay · Ila R. Fiete -
2023 : Optimizing protein fitness using Gibbs sampling with Graph-based Smoothing »
Andrew Kirjner · Jason Yim · Raman Samusevich · Tommi Jaakkola · Regina Barzilay · Ila R. Fiete -
2023 : Panel Discussion »
Chenlin Meng · Yang Song · Yilun Xu · Ricky T. Q. Chen · Charlotte Bunne · Arash Vahdat -
2023 : Invited Talk by Tommi Jaakkola »
Tommi Jaakkola -
2023 Poster: Towards Coherent Image Inpainting Using Denoising Diffusion Implicit Models »
Guanhua Zhang · Jiabao Ji · Yang Zhang · Mo Yu · Tommi Jaakkola · Shiyu Chang -
2023 Poster: SE(3) diffusion model with application to protein backbone generation »
Jason Yim · Brian Trippe · Valentin De Bortoli · Emile Mathieu · Arnaud Doucet · Regina Barzilay · Tommi Jaakkola -
2022 Workshop: AI for Science »
Yuanqi Du · Tianfan Fu · Wenhao Gao · Kexin Huang · Shengchao Liu · Ziming Liu · Hanchen Wang · Connor Coley · Le Song · Linfeng Zhang · Marinka Zitnik -
2022 Poster: Antibody-Antigen Docking and Design via Hierarchical Structure Refinement »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2022 Spotlight: Antibody-Antigen Docking and Design via Hierarchical Structure Refinement »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2022 Poster: Conformal Prediction Sets with Limited False Positives »
Adam Fisch · Tal Schuster · Tommi Jaakkola · Regina Barzilay -
2022 Poster: EquiBind: Geometric Deep Learning for Drug Binding Structure Prediction »
Hannes Stärk · Octavian Ganea · Lagnajit Pattanaik · Regina Barzilay · Tommi Jaakkola -
2022 Spotlight: Conformal Prediction Sets with Limited False Positives »
Adam Fisch · Tal Schuster · Tommi Jaakkola · Regina Barzilay -
2022 Spotlight: EquiBind: Geometric Deep Learning for Drug Binding Structure Prediction »
Hannes Stärk · Octavian Ganea · Lagnajit Pattanaik · Regina Barzilay · Tommi Jaakkola -
2021 Poster: Few-Shot Conformal Prediction with Auxiliary Tasks »
Adam Fisch · Tal Schuster · Tommi Jaakkola · Regina Barzilay -
2021 Spotlight: Few-Shot Conformal Prediction with Auxiliary Tasks »
Adam Fisch · Tal Schuster · Tommi Jaakkola · Regina Barzilay -
2021 Poster: Can Subnetwork Structure Be the Key to Out-of-Distribution Generalization? »
Dinghuai Zhang · Kartik Ahuja · Yilun Xu · Yisen Wang · Aaron Courville -
2021 Oral: Can Subnetwork Structure Be the Key to Out-of-Distribution Generalization? »
Dinghuai Zhang · Kartik Ahuja · Yilun Xu · Yisen Wang · Aaron Courville -
2021 Poster: Information Obfuscation of Graph Neural Networks »
Peiyuan Liao · Han Zhao · Keyulu Xu · Tommi Jaakkola · Geoff Gordon · Stefanie Jegelka · Ruslan Salakhutdinov -
2021 Spotlight: Information Obfuscation of Graph Neural Networks »
Peiyuan Liao · Han Zhao · Keyulu Xu · Tommi Jaakkola · Geoff Gordon · Stefanie Jegelka · Ruslan Salakhutdinov -
2021 Poster: Learning Task Informed Abstractions »
Xiang Fu · Ge Yang · Pulkit Agrawal · Tommi Jaakkola -
2021 Spotlight: Learning Task Informed Abstractions »
Xiang Fu · Ge Yang · Pulkit Agrawal · Tommi Jaakkola -
2020 : Invited Talk: Tommi Jaakkola »
Tommi Jaakkola -
2020 Poster: Generalization and Representational Limits of Graph Neural Networks »
Vikas K Garg · Stefanie Jegelka · Tommi Jaakkola -
2020 Poster: Multi-Objective Molecule Generation using Interpretable Substructures »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2020 Poster: Educating Text Autoencoders: Latent Representation Guidance via Denoising »
Tianxiao Shen · Jonas Mueller · Regina Barzilay · Tommi Jaakkola -
2020 Poster: Invariant Rationalization »
Shiyu Chang · Yang Zhang · Mo Yu · Tommi Jaakkola -
2020 Poster: Predicting deliberative outcomes »
Vikas K Garg · Tommi Jaakkola -
2020 Poster: Hierarchical Generation of Molecular Graphs using Structural Motifs »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2020 Poster: Improving Molecular Design by Stochastic Iterative Target Augmentation »
Kevin Yang · Wengong Jin · Kyle Swanson · Regina Barzilay · Tommi Jaakkola -
2019 Poster: Functional Transparency for Structured Data: a Game-Theoretic Approach »
Guang-He Lee · Wengong Jin · David Alvarez-Melis · Tommi Jaakkola -
2019 Oral: Functional Transparency for Structured Data: a Game-Theoretic Approach »
Guang-He Lee · Wengong Jin · David Alvarez-Melis · Tommi Jaakkola -
2018 Poster: Junction Tree Variational Autoencoder for Molecular Graph Generation »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2018 Oral: Junction Tree Variational Autoencoder for Molecular Graph Generation »
Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2017 Poster: Learning Sleep Stages from Radio Signals: A Conditional Adversarial Architecture »
Mingmin Zhao · Shichao Yue · Dina Katabi · Tommi Jaakkola · Matt Bianchi -
2017 Talk: Learning Sleep Stages from Radio Signals: A Conditional Adversarial Architecture »
Mingmin Zhao · Shichao Yue · Dina Katabi · Tommi Jaakkola · Matt Bianchi -
2017 Poster: Sequence to Better Sequence: Continuous Revision of Combinatorial Structures »
Jonas Mueller · David Gifford · Tommi Jaakkola -
2017 Poster: Tunable Efficient Unitary Neural Networks (EUNN) and their application to RNNs »
Li Jing · Yichen Shen · Tena Dubcek · John E Peurifoy · Scott Skirlo · Yann LeCun · Max Tegmark · Marin Soljačić -
2017 Talk: Sequence to Better Sequence: Continuous Revision of Combinatorial Structures »
Jonas Mueller · David Gifford · Tommi Jaakkola -
2017 Talk: Tunable Efficient Unitary Neural Networks (EUNN) and their application to RNNs »
Li Jing · Yichen Shen · Tena Dubcek · John E Peurifoy · Scott Skirlo · Yann LeCun · Max Tegmark · Marin Soljačić -
2017 Poster: Deriving Neural Architectures from Sequence and Graph Kernels »
Tao Lei · Wengong Jin · Regina Barzilay · Tommi Jaakkola -
2017 Talk: Deriving Neural Architectures from Sequence and Graph Kernels »
Tao Lei · Wengong Jin · Regina Barzilay · Tommi Jaakkola