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.
翻译:本文提出一个新的基于图形的常规回归估计值,即等级特征回归(HFR),它从机器学习领域和图形理论领域收集洞察力,以估计线性回归的稳健参数。估计值构建了一个监督的特征图,在边缘进行分解,首先根据常见的变化进行调整,然后将特异性模式相继纳入适应过程。图形结构的作用是将参数缩小到群落目标,在群落目标中,缩小范围由超双极分解器调节,组群组成和缩缩缩目标由内源决定。该方法为数据潜在效应结构的直观探索提供了丰富的资源,并展示了良好的预测准确性和多功能性,如果与一系列实验和模拟回归任务中常用的正规化技术小组相比,则显示了良好的预测性和多功能性。