Latent Multimodal Functional Graphical Model Estimation
- URL: http://arxiv.org/abs/2210.17237v3
- Date: Sun, 1 Oct 2023 04:48:00 GMT
- Title: Latent Multimodal Functional Graphical Model Estimation
- Authors: Katherine Tsai, Boxin Zhao, Sanmi Koyejo, Mladen Kolar
- Abstract summary: We propose a new framework that models the data generation process and identifies operators mapping from the observation space to the latent space.
We then develop an estimator that simultaneously estimates the transformation operators and the latent graph.
Our work is applied to analyze simultaneously acquired multimodal brain imaging data where the graph indicates functional connectivity of the brain.
- Score: 26.457941699285165
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Joint multimodal functional data acquisition, where functional data from
multiple modes are measured simultaneously from the same subject, has emerged
as an exciting modern approach enabled by recent engineering breakthroughs in
the neurological and biological sciences. One prominent motivation to acquire
such data is to enable new discoveries of the underlying connectivity by
combining multimodal signals. Despite the scientific interest, there remains a
gap in principled statistical methods for estimating the graph underlying
multimodal functional data. To this end, we propose a new integrative framework
that models the data generation process and identifies operators mapping from
the observation space to the latent space. We then develop an estimator that
simultaneously estimates the transformation operators and the latent graph.
This estimator is based on the partial correlation operator, which we
rigorously extend from the multivariate to the functional setting. Our
procedure is provably efficient, with the estimator converging to a stationary
point with quantifiable statistical error. Furthermore, we show recovery of the
latent graph under mild conditions. Our work is applied to analyze
simultaneously acquired multimodal brain imaging data where the graph indicates
functional connectivity of the brain. We present simulation and empirical
results that support the benefits of joint estimation.
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