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Graphical Model Inference with Erosely Measured Data. | LitMetric

Graphical Model Inference with Erosely Measured Data.

J Am Stat Assoc

Department of Electrical and Computer Engineering, Rice University.

Published: October 2023

In this paper, we investigate the Gaussian graphical model inference problem in a novel setting that we call measurements, referring to irregularly measured or observed data. For graphs, this results in different node pairs having vastly different sample sizes which frequently arises in data integration, genomics, neuroscience, and sensor networks. Existing works characterize the graph selection performance using the minimum pairwise sample size, which provides little insights for erosely measured data, and no existing inference method is applicable. We aim to fill in this gap by proposing the first inference method that characterizes the different uncertainty levels over the graph caused by the erose measurements, named GI-JOE (raph nference when oint bservations are rose). Specifically, we develop an edge-wise inference method and an affiliated FDR control procedure, where the variance of each edge depends on the sample sizes associated with corresponding neighbors. We prove statistical validity under erose measurements, thanks to careful localized edge-wise analysis and disentangling the dependencies across the graph. Finally, through simulation studies and a real neuroscience data example, we demonstrate the advantages of our inference methods for graph selection from erosely measured data.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11424035PMC
http://dx.doi.org/10.1080/01621459.2023.2256503DOI Listing

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