Generalized Kernel Regularized Least Squares

IF 4.7 2区 社会学 Q1 POLITICAL SCIENCE
Qing Chang, Max Goplerud
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引用次数: 0

Abstract

Abstract Kernel regularized least squares (KRLS) is a popular method for flexibly estimating models that may have complex relationships between variables. However, its usefulness to many researchers is limited for two reasons. First, existing approaches are inflexible and do not allow KRLS to be combined with theoretically motivated extensions such as random effects, unregularized fixed effects, or non-Gaussian outcomes. Second, estimation is extremely computationally intensive for even modestly sized datasets. Our paper addresses both concerns by introducing generalized KRLS ( gKRLS ). We note that KRLS can be re-formulated as a hierarchical model thereby allowing easy inference and modular model construction where KRLS can be used alongside random effects, splines, and unregularized fixed effects. Computationally, we also implement random sketching to dramatically accelerate estimation while incurring a limited penalty in estimation quality. We demonstrate that gKRLS can be fit on datasets with tens of thousands of observations in under 1 min. Further, state-of-the-art techniques that require fitting the model over a dozen times (e.g., meta-learners) can be estimated quickly.
广义核正则化最小二乘
摘要核正则化最小二乘(KRLS)是一种用于灵活估计具有复杂变量关系的模型的常用方法。然而,由于两个原因,它对许多研究人员的用处是有限的。首先,现有的方法不灵活,不允许KRLS与理论驱动的扩展相结合,如随机效应、非正则化固定效应或非高斯结果。其次,即使对于中等规模的数据集,估计也是非常密集的计算。本文通过引入广义KRLS (gKRLS)来解决这两个问题。我们注意到KRLS可以重新表述为层次模型,从而允许简单的推理和模块化模型构建,其中KRLS可以与随机效应,样条和非正则化固定效应一起使用。在计算上,我们还实现了随机草图来显著加速估计,同时在估计质量上产生有限的损失。我们证明gKRLS可以在1分钟内拟合数以万计的观测数据集。此外,需要十几次拟合模型的最先进技术(例如元学习器)可以快速估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Political Analysis
Political Analysis POLITICAL SCIENCE-
CiteScore
8.80
自引率
3.70%
发文量
30
期刊介绍: Political Analysis chronicles these exciting developments by publishing the most sophisticated scholarship in the field. It is the place to learn new methods, to find some of the best empirical scholarship, and to publish your best research.
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