Learning Continuous System Dynamics from Irregularly-Sampled Partial Observations
November 08, 2020 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Zijie Huang, Yizhou Sun, Wei Wang
arXiv ID
2011.03880
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
90
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Many real-world systems, such as moving planets, can be considered as multi-agent dynamic systems, where objects interact with each other and co-evolve along with the time. Such dynamics is usually difficult to capture, and understanding and predicting the dynamics based on observed trajectories of objects become a critical research problem in many domains. Most existing algorithms, however, assume the observations are regularly sampled and all the objects can be fully observed at each sampling time, which is impractical for many applications. In this paper, we propose to learn system dynamics from irregularly-sampled partial observations with underlying graph structure for the first time. To tackle the above challenge, we present LG-ODE, a latent ordinary differential equation generative model for modeling multi-agent dynamic system with known graph structure. It can simultaneously learn the embedding of high dimensional trajectories and infer continuous latent system dynamics. Our model employs a novel encoder parameterized by a graph neural network that can infer initial states in an unsupervised way from irregularly-sampled partial observations of structural objects and utilizes neuralODE to infer arbitrarily complex continuous-time latent dynamics. Experiments on motion capture, spring system, and charged particle datasets demonstrate the effectiveness of our approach.
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