SamsungLabs / semi-supervised-NFs
Code for the paper Semi-Conditional Normalizing Flows for Semi-Supervised Learning
☆28Updated 3 years ago
Related projects ⓘ
Alternatives and complementary repositories for semi-supervised-NFs
- PyTorch implementation of the OT-Flow approach in arXiv:2006.00104☆49Updated 3 months ago
- PyTorch implementation of Continuously Indexed Flows paper, with many baseline normalising flows☆30Updated 3 years ago
- ☆67Updated 2 years ago
- PyTorch implementation of Bidirectional Monte Carlo, Annealed Importance Sampling, and Hamiltonian Monte Carlo.☆52Updated 3 years ago
- Discrete Normalizing Flows implemented in PyTorch☆107Updated 3 years ago
- Experiments for the Neural Autoregressive Flows paper☆123Updated 3 years ago
- ☆52Updated 3 months ago
- Code for the Thermodynamic Variational Objective☆26Updated 2 years ago
- Regularized Neural ODEs (RNODE)☆82Updated 3 years ago
- A PyTorch re-implementation of "Doubly Reparameterized Gradient Estimators for Monte Carlo Objectives"☆18Updated 5 years ago
- Source code for Large-Scale Wasserstein Gradient Flows (NeurIPS 2021)☆29Updated 2 years ago
- [AAAI 2020 Oral] Low-variance Black-box Gradient Estimates for the Plackett-Luce Distribution☆36Updated 3 years ago
- Neural likelihood-free methods in PyTorch.☆39Updated 4 years ago
- code submission to NeurIPS2019☆13Updated last year
- Implementation and tutorials of normalizing flows with the novel distributions module☆160Updated 4 years ago
- Featurized Density Ratio Estimation☆20Updated 3 years ago
- Code for paper "Closing the Dequantization Gap: PixelCNN as a Single-Layer Flow"☆18Updated 4 years ago
- [AISTATS2020] The official repository of "Invertible Generative Modling using Linear Rational Splines (LRS)".☆20Updated last year
- ☆36Updated 4 years ago
- ☆28Updated 2 years ago
- PyTorch implementation of Algorithm 1 of "On the Anatomy of MCMC-Based Maximum Likelihood Learning of Energy-Based Models"☆36Updated 3 months ago
- Code for "A Spectral Approach to Gradient Estimation for Implicit Distributions" (ICML'18)☆32Updated last year
- Official PyTorch BIVA implementation (BIVA: A Very Deep Hierarchy of Latent Variables for Generative Modeling)☆82Updated last year
- ☆31Updated 4 years ago
- Official Release of "Learning the Stein Discrepancy for Training and Evaluating Energy-Based Models without Sampling"☆47Updated 4 years ago
- Implicit Generation and Generalization in Energy Based Models in PyTorch☆65Updated 5 years ago
- ☆178Updated 5 years ago
- Code for Understanding and Mitigating Exploding Inverses in Invertible Neural Networks (AISTATS 2021) http://arxiv.org/abs/2006.09347☆28Updated 4 years ago
- Sliced Wasserstein Generator☆23Updated 6 years ago
- Scalable Training of Inference Networks for Gaussian-Process Models, ICML 2019☆41Updated last year