异质性数据的软极大极小估计

Soft maximin estimation for heterogeneous data

Scandinavian Journal of Statistics · 2022
被引 1
ABS 3

中文导读

提出软极大极小估计方法,在异质性数据中平衡合并估计与硬极大极小估计,通过参数调控实现预测性能和计算效率的改进,并提供R包实现。

Abstract

Abstract Extracting a common robust signal from data divided into heterogeneous groups is challenging when each group—in addition to the signal—contains large, unique variation components. Previously, maximin estimation was proposed as a robust method in the presence of heterogeneous noise. We propose soft maximin estimation as a computationally attractive alternative aimed at striking a balance between pooled estimation and (hard) maximin estimation. The soft maximin method provides a range of estimators, controlled by a parameter , that interpolates pooled least squares estimation and maximin estimation. By establishing relevant theoretical properties we argue that the soft maximin method is statistically sensible and computationally attractive. We demonstrate, on real and simulated data, that soft maximin estimation can offer improvements over both pooled OLS and hard maximin in terms of predictive performance and computational complexity. A time and memory efficient implementation is provided in the R package SMME available on CRAN.

计量经济学统计学应用数学经济学