English

Pathway Lasso: Estimate and Select Sparse Mediation Pathways with High Dimensional Mediators

Machine Learning 2016-03-28 v1 Applications Methodology

Abstract

In many scientific studies, it becomes increasingly important to delineate the causal pathways through a large number of mediators, such as genetic and brain mediators. Structural equation modeling (SEM) is a popular technique to estimate the pathway effects, commonly expressed as products of coefficients. However, it becomes unstable to fit such models with high dimensional mediators, especially for a general setting where all the mediators are causally dependent but the exact causal relationships between them are unknown. This paper proposes a sparse mediation model using a regularized SEM approach, where sparsity here means that a small number of mediators have nonzero mediation effects between a treatment and an outcome. To address the model selection challenge, we innovate by introducing a new penalty called Pathway Lasso. This penalty function is a convex relaxation of the non-convex product function, and it enables a computationally tractable optimization criterion to estimate and select many pathway effects simultaneously. We develop a fast ADMM-type algorithm to compute the model parameters, and we show that the iterative updates can be expressed in closed form. On both simulated data and a real fMRI dataset, the proposed approach yields higher pathway selection accuracy and lower estimation bias than other competing methods.

Keywords

Cite

@article{arxiv.1603.07749,
  title  = {Pathway Lasso: Estimate and Select Sparse Mediation Pathways with High Dimensional Mediators},
  author = {Yi Zhao and Xi Luo},
  journal= {arXiv preprint arXiv:1603.07749},
  year   = {2016}
}

Comments

26 pages and 7 figures. Presented at the 2016 ENAR meeting, March 8, 2016, see slides at https://rluo.github.io/slides/MultipleMediator_ENAR_2016.html

R2 v1 2026-06-22T13:18:20.120Z