STEMFold: Stochastic Temporal Manifold for Multi-Agent Interactions in the Presence of Hidden Agents

Abstract

Learning accurate, data-driven predictive models for multiple interacting agents following unknown dynamics is crucial in many real-world physical and social systems. In many scenarios, dynamics prediction must be performed under incomplete observations, i.e., only a subset of agents are known and observable from a larger topological system while the behaviors of the unobserved agents and their interactions with the observed agents are not known. When only incomplete observations of a dynamical system are available, so that some states remain hidden, it is generally not possible to learn a closed-form model in these variables using either analytic or data-driven techniques. In this work, we propose STEMFold, a spatiotemporal attention-based generative model, to learn a stochastic manifold to predict the underlying unmeasured dynamics of the multi-agent system from observations of only visible agents. Our analytical results motivate STEMFold design using a spatiotemporal graph with time anchors to effectively map the observations of visible agents to a stochastic manifold with no prior information about interaction graph topology. We empirically evaluated our method on two simulations and two real-world datasets, where it outperformed existing networks in predicting complex multiagent interactions, even with many unobserved agents.

Cite

Text

Kumawat et al. "STEMFold: Stochastic Temporal Manifold for Multi-Agent Interactions in the Presence of Hidden Agents." Proceedings of the 6th Annual Learning for Dynamics & Control Conference, 2024.

Markdown

[Kumawat et al. "STEMFold: Stochastic Temporal Manifold for Multi-Agent Interactions in the Presence of Hidden Agents." Proceedings of the 6th Annual Learning for Dynamics & Control Conference, 2024.](https://mlanthology.org/l4dc/2024/kumawat2024l4dc-stemfold/)

BibTeX

@inproceedings{kumawat2024l4dc-stemfold,
  title     = {{STEMFold: Stochastic Temporal Manifold for Multi-Agent Interactions in the Presence of Hidden Agents}},
  author    = {Kumawat, Hemant and Chakraborty, Biswadeep and Mukhopadhyay, Saibal},
  booktitle = {Proceedings of the 6th Annual Learning for Dynamics & Control Conference},
  year      = {2024},
  pages     = {1427-1439},
  volume    = {242},
  url       = {https://mlanthology.org/l4dc/2024/kumawat2024l4dc-stemfold/}
}