Latent Dynamic Factor Analysis of High-Dimensional Neural Recordings
Abstract
High-dimensional neural recordings across multiple brain regions can be used to establish functional connectivity with good spatial and temporal resolution. We designed and implemented a novel method, Latent Dynamic Factor Analysis of High-dimensional time series (LDFA-H), which combines (a) a new approach to estimating the covariance structure among high-dimensional time series (for the observed variables) and (b) a new extension of probabilistic CCA to dynamic time series (for the latent variables). Our interest is in the cross-correlations among the latent variables which, in neural recordings, may capture the flow of information from one brain region to another. Simulations show that LDFA-H outperforms existing methods in the sense that it captures target factors even when within-region correlation due to noise dominates cross-region correlation. We applied our method to local field potential (LFP) recordings from 192 electrodes in Prefrontal Cortex (PFC) and visual area V4 during a memory-guided saccade task. The results capture time-varying lead-lag dependencies between PFC and V4, and display the associated spatial distribution of the signals.
Cite
Text
Bong et al. "Latent Dynamic Factor Analysis of High-Dimensional Neural Recordings." Neural Information Processing Systems, 2020.Markdown
[Bong et al. "Latent Dynamic Factor Analysis of High-Dimensional Neural Recordings." Neural Information Processing Systems, 2020.](https://mlanthology.org/neurips/2020/bong2020neurips-latent/)BibTeX
@inproceedings{bong2020neurips-latent,
title = {{Latent Dynamic Factor Analysis of High-Dimensional Neural Recordings}},
author = {Bong, Heejong and Liu, Zongge and Ren, Zhao and Smith, Matthew and Ventura, Valerie and Kass, Robert E},
booktitle = {Neural Information Processing Systems},
year = {2020},
url = {https://mlanthology.org/neurips/2020/bong2020neurips-latent/}
}