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Cluster Regularization via a Hierarchical Feature Regression

Machine Learning 2022-01-11 v2 Machine Learning

Abstract

This paper proposes a novel graph-based regularized regression estimator - the hierarchical feature regression (HFR) -, which mobilizes insights from the domains of machine learning and graph theory to estimate robust parameters for a linear regression. The estimator constructs a supervised feature graph that decomposes parameters along its edges, adjusting first for common variation and successively incorporating idiosyncratic patterns into the fitting process. The graph structure has the effect of shrinking parameters towards group targets, where the extent of shrinkage is governed by a hyperparamter, and group compositions as well as shrinkage targets are determined endogenously. The method offers rich resources for the visual exploration of the latent effect structure in the data, and demonstrates good predictive accuracy and versatility when compared to a panel of commonly used regularization techniques across a range of empirical and simulated regression tasks.

Keywords

Cite

@article{arxiv.2107.04831,
  title  = {Cluster Regularization via a Hierarchical Feature Regression},
  author = {Johann Pfitzinger},
  journal= {arXiv preprint arXiv:2107.04831},
  year   = {2022}
}

Comments

Updated figures and arguments. Results unchanged

R2 v1 2026-06-24T04:04:02.114Z