arXiv Analytics

Sign in

arXiv:2403.11418 [cs.LG]AbstractReferencesReviewsResources

Variational Sampling of Temporal Trajectories

Jurijs Nazarovs, Zhichun Huang, Xingjian Zhen, Sourav Pal, Rudrasis Chakraborty, Vikas Singh

Published 2024-03-18Version 1

A deterministic temporal process can be determined by its trajectory, an element in the product space of (a) initial condition $z_0 \in \mathcal{Z}$ and (b) transition function $f: (\mathcal{Z}, \mathcal{T}) \to \mathcal{Z}$ often influenced by the control of the underlying dynamical system. Existing methods often model the transition function as a differential equation or as a recurrent neural network. Despite their effectiveness in predicting future measurements, few results have successfully established a method for sampling and statistical inference of trajectories using neural networks, partially due to constraints in the parameterization. In this work, we introduce a mechanism to learn the distribution of trajectories by parameterizing the transition function $f$ explicitly as an element in a function space. Our framework allows efficient synthesis of novel trajectories, while also directly providing a convenient tool for inference, i.e., uncertainty estimation, likelihood evaluations and out of distribution detection for abnormal trajectories. These capabilities can have implications for various downstream tasks, e.g., simulation and evaluation for reinforcement learning.

Related articles: Most relevant | Search more
arXiv:2401.15856 [cs.LG] (Published 2024-01-29, updated 2025-01-08)
The Indoor-Training Effect: unexpected gains from distribution shifts in the transition function
arXiv:2311.01329 [cs.LG] (Published 2023-11-02)
A Simple Solution for Offline Imitation from Observations and Examples with Possibly Incomplete Trajectories
arXiv:2106.04219 [cs.LG] (Published 2021-06-08)
Time-series Imputation of Temporally-occluded Multiagent Trajectories