High-Dimensional Inference for Cluster-Based Graphical Models
Carson Eisenach, Florentina Bunea, Yang Ning, Claudiu Dinicu

TL;DR
This paper develops new high-dimensional inference methods for cluster-based graphical models, addressing challenges in likelihood-based inference for latent variables and providing asymptotic guarantees for estimators.
Contribution
It introduces alternative estimation strategies for latent graphical models using empirical risk functions, with theoretical analysis including central limit theorems.
Findings
Likelihood-based inference for the latent graph is intractable.
Proposed estimators enable inference on graph structure and edge patterns.
Central limit theorems hold despite adaptive clustering.
Abstract
Motivated by modern applications in which one constructs graphical models based on a very large number of features, this paper introduces a new class of cluster-based graphical models, in which variable clustering is applied as an initial step for reducing the dimension of the feature space. We employ model assisted clustering, in which the clusters contain features that are similar to the same unobserved latent variable. Two different cluster-based Gaussian graphical models are considered: the latent variable graph, corresponding to the graphical model associated with the unobserved latent variables, and the cluster-average graph, corresponding to the vector of features averaged over clusters. Our study reveals that likelihood based inference for the latent graph, not analyzed previously, is analytically intractable. Our main contribution is the development and analysis of alternative…
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Taxonomy
TopicsStatistical Methods and Inference · Bayesian Modeling and Causal Inference · Statistical Methods and Bayesian Inference
