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Supervised Homogeneity Fusion: a Combinatorial Approach

4 January 2022
Wen Wang
Shihao Wu
Ziwei Zhu
Ling Zhou
P. Song
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Abstract

Fusing regression coefficients into homogenous groups can unveil those coefficients that share a common value within each group. Such groupwise homogeneity reduces the intrinsic dimension of the parameter space and unleashes sharper statistical accuracy. We propose and investigate a new combinatorial grouping approach called L0L_0L0​-Fusion that is amenable to mixed integer optimization (MIO). On the statistical aspect, we identify a fundamental quantity called grouping sensitivity that underpins the difficulty of recovering the true groups. We show that L0L_0L0​-Fusion achieves grouping consistency under the weakest possible requirement of the grouping sensitivity: if this requirement is violated, then the minimax risk of group misspecification will fail to converge to zero. Moreover, we show that in the high-dimensional regime, one can apply L0L_0L0​-Fusion coupled with a sure screening set of features without any essential loss of statistical efficiency, while reducing the computational cost substantially. On the algorithmic aspect, we provide a MIO formulation for L0L_0L0​-Fusion along with a warm start strategy. Simulation and real data analysis demonstrate that L0L_0L0​-Fusion exhibits superiority over its competitors in terms of grouping accuracy.

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