Diff-prior uses a diffusion model to learn an adaptive graph prior that performs denoising-style calibration on edge posteriors to yield more reliable interaction graphs in NRI tasks.
Factorised Neural Relational Inference for Multi-Interaction Systems
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Many complex natural and cultural phenomena are well modelled by systems of simple interactions between particles. A number of architectures have been developed to articulate this kind of structure, both implicitly and explicitly. We consider an unsupervised explicit model, the NRI model, and make a series of representational adaptations and physically motivated changes. Most notably we factorise the inferred latent interaction graph into a multiplex graph, allowing each layer to encode for a different interaction-type. This fNRI model is smaller in size and significantly outperforms the original in both edge and trajectory prediction, establishing a new state-of-the-art. We also present a simplified variant of our model, which demonstrates the NRI's formulation as a variational auto-encoder is not necessary for good performance, and make an adaptation to the NRI's training routine, significantly improving its ability to model complex physical dynamical systems.
fields
cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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From Uniform to Learned Graph Priors: Diffusion for Structure Discovery
Diff-prior uses a diffusion model to learn an adaptive graph prior that performs denoising-style calibration on edge posteriors to yield more reliable interaction graphs in NRI tasks.