SELECTIVE INFERENCE FOR SPARSE MULTITASK REGRESSION WITH APPLICATIONS IN NEUROIMAGING
成果类型:
Article
署名作者:
Panigrahi, Snigdha; Stewart, Natasha; Sripada, Chandra; Levina, Elizaveta
署名单位:
University of Michigan System; University of Michigan; University of Michigan System; University of Michigan
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/23-AOAS1796
发表日期:
2024
页码:
445-467
关键词:
cognitive control network
cerebellum
MOVEMENT
differentiation
intelligence
features
predict
摘要:
Multitask learning is frequently used to model a set of related response variables from the same set of features, improving predictive performance and modeling accuracy relative to methods that handle each response variable separately. Despite the potential of multitask learning to yield more powerful inference than single-task alternatives, prior work in this area has largely omitted uncertainty quantification. Our focus in this paper is a common multitask problem in neuroimaging, where the goal is to understand the relationship between multiple cognitive task scores (or other subject-level assessments) and brain connectome data collected from imaging. We propose a framework for selective inference to address this problem, with the flexibility to: (i) jointly identify the relevant predictors for each task through a sparsity-inducing penalty and (ii) conduct valid inference in a model based on the estimated sparsity structure. Our framework offers a new conditional procedure for inference, based on a refinement of the selection event that yields a tractable selection-adjusted likelihood. This gives an approximate system of estimating equations for maximum likelihood inference, solvable via a single convex optimization problem, and enables us to efficiently form confidence intervals with approximately the correct coverage. Applied to both simulated data and data from the Adolescent Brain Cognitive Development vals than commonly used alternatives, such as data splitting. We also demonstrate through simulations that multitask learning with selective inference can more accurately recover true signals than single-task methods.
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