Adversarial Stein Training for Graph Energy Models
- URL: http://arxiv.org/abs/2108.12982v1
- Date: Mon, 30 Aug 2021 03:55:18 GMT
- Title: Adversarial Stein Training for Graph Energy Models
- Authors: Shiv Shankar
- Abstract summary: We use an energy-based model (EBM) based on multi-channel graph neural networks (GNN) to learn permutation invariant unnormalized density functions on graphs.
We find that this approach achieves competitive results on graph generation compared to benchmark models.
- Score: 11.182263394122142
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Learning distributions over graph-structured data is a challenging task with
many applications in biology and chemistry. In this work we use an energy-based
model (EBM) based on multi-channel graph neural networks (GNN) to learn
permutation invariant unnormalized density functions on graphs. Unlike standard
EBM training methods our approach is to learn the model via minimizing
adversarial stein discrepancy. Samples from the model can be obtained via
Langevin dynamics based MCMC. We find that this approach achieves competitive
results on graph generation compared to benchmark models.
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