MELGSTAPMLMay 25, 2025

A Unified Framework for Variable Selection in Model-Based Clustering with Missing Not at Random

arXiv:2505.19093v31 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work addresses challenges in fields like transcriptomics for researchers dealing with complex missing data patterns, though it appears incremental as it builds on existing methods by combining them.

The paper tackles the problem of variable selection in model-based clustering with missing not at random data by introducing a unified framework that simultaneously addresses variable selection and missing data modeling, achieving asymptotic and selection consistency under certain conditions.

Model-based clustering integrated with variable selection is a powerful tool for uncovering latent structures within complex data. However, its effectiveness is often hindered by challenges such as identifying relevant variables that define heterogeneous subgroups and handling data that are missing not at random, a prevalent issue in fields like transcriptomics. While several notable methods have been proposed to address these problems, they typically tackle each issue in isolation, thereby limiting their flexibility and adaptability. This paper introduces a unified framework designed to address these challenges simultaneously. Our approach incorporates a data-driven penalty matrix into penalized clustering to enable more flexible variable selection, along with a mechanism that explicitly models the relationship between missingness and latent class membership. We demonstrate that, under certain regularity conditions, the proposed framework achieves both asymptotic consistency and selection consistency, even in the presence of missing data. This unified strategy significantly enhances the capability and efficiency of model-based clustering, advancing methodologies for identifying informative variables that define homogeneous subgroups in the presence of complex missing data patterns. The performance of the framework, including its computational efficiency, is evaluated through simulations and demonstrated using both synthetic and real-world transcriptomic datasets.

Foundations

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