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Generative Flow Networks for Discrete Probabilistic Modeling

About

We present energy-based generative flow networks (EB-GFN), a novel probabilistic modeling algorithm for high-dimensional discrete data. Building upon the theory of generative flow networks (GFlowNets), we model the generation process by a stochastic data construction policy and thus amortize expensive MCMC exploration into a fixed number of actions sampled from a GFlowNet. We show how GFlowNets can approximately perform large-block Gibbs sampling to mix between modes. We propose a framework to jointly train a GFlowNet with an energy function, so that the GFlowNet learns to sample from the energy distribution, while the energy learns with an approximate MLE objective with negative samples from the GFlowNet. We demonstrate EB-GFN's effectiveness on various probabilistic modeling tasks. Code is publicly available at https://github.com/zdhNarsil/EB_GFN.

Dinghuai Zhang, Nikolay Malkin, Zhen Liu, Alexandra Volokhova, Aaron Courville, Yoshua Bengio• 2022

Related benchmarks

TaskDatasetResultRank
Image ModelingOmniglot (test)
NLL112.6
27
Discrete Image ModellingMNIST Static (test)
NLL102.4
6
Discrete Image ModellingMNIST dynamic (test)
NLL105.8
6
Discrete Density Estimationcircles
NLL20.546
5
Discrete Density Estimationpinwheel
NLL19.554
5
Discrete Density Estimationcheckerboard Gray code (test)
MMD1.206
5
Training Ising ModelsLattice Ising model D=10^2
Mean negative log-RMSE (σ=0.1)6.1
5
Training Ising ModelsLattice Ising model D=9^2
Mean negative log-RMSE (σ=-0.1)5.7
5
Discrete Density Estimation8gaussians
NLL19.982
5
Discrete Density Estimation2spirals
NLL20.05
5
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