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Neural Relational Inference for Interacting Systems

About

Interacting systems are prevalent in nature, from dynamical systems in physics to complex societal dynamics. The interplay of components can give rise to complex behavior, which can often be explained using a simple model of the system's constituent parts. In this work, we introduce the neural relational inference (NRI) model: an unsupervised model that learns to infer interactions while simultaneously learning the dynamics purely from observational data. Our model takes the form of a variational auto-encoder, in which the latent code represents the underlying interaction graph and the reconstruction is based on graph neural networks. In experiments on simulated physical systems, we show that our NRI model can accurately recover ground-truth interactions in an unsupervised manner. We further demonstrate that we can find an interpretable structure and predict complex dynamics in real motion capture and sports tracking data.

Thomas Kipf, Ethan Fetaya, Kuan-Chieh Wang, Max Welling, Richard Zemel• 2018

Related benchmarks

TaskDatasetResultRank
Trajectory PredictionNBA (test)
minADE200.6
143
Trajectory PredictionH3D
minADE (2.0s)0.24
48
Atomic force predictionMD17 (test)--
22
Time Series ForecastingSink 5-node graphs
MSE5.25
13
Time Series ForecastingSquare 5-node graphs
MSE9.39
13
Time Series ForecastingTriangle 5-node graphs
MSE3.96
13
Time Series ForecastingSawtooth 5-node graphs
MSE4.99
13
Interaction RecognitionSynthetic Particle Physics System
Accuracy91.3
11
Trajectory PredictionSocial Navigation Environment 2x smaller (test)
ADE0.354
10
Relational inferenceSocial Navigation environment
Graph Accuracy57.18
10
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