Spacetime Autoencoders Using Local Causal States
Machine Learning
2020-10-13 v1 Adaptation and Self-Organizing Systems
Computational Physics
Abstract
Local causal states are latent representations that capture organized pattern and structure in complex spatiotemporal systems. We expand their functionality, framing them as spacetime autoencoders. Previously, they were only considered as maps from observable spacetime fields to latent local causal state fields. Here, we show that there is a stochastic decoding that maps back from the latent fields to observable fields. Furthermore, their Markovian properties define a stochastic dynamic in the latent space. Combined with stochastic decoding, this gives a new method for forecasting spacetime fields.
Keywords
Cite
@article{arxiv.2010.05451,
title = {Spacetime Autoencoders Using Local Causal States},
author = {Adam Rupe and James P. Crutchfield},
journal= {arXiv preprint arXiv:2010.05451},
year = {2020}
}