Double debiased transfer learning for adaptive Huber regression

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY
Ziyuan Wang, Lei Wang, Heng Lian
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引用次数: 0

Abstract

Through exploiting information from the source data to improve the fit performance on the target data, transfer learning estimations for high‐dimensional linear regression models have drawn much attention recently, but few studies focus on statistical inference and robust learning in the presence of heavy‐tailed/asymmetric errors. Using adaptive Huber regression (AHR) to achieve the bias and robustness tradeoff, in this paper we propose a robust transfer learning algorithm with high‐dimensional covariates, then construct valid confidence intervals and hypothesis tests based on the debiased lasso approach. When the transferable sources are known, a two‐step ‐penalized transfer AHR estimator is firstly proposed and the error bounds are established. To correct the biases caused by the lasso penalty, a unified debiasing framework based on the decorrelated score equations is considered to establish asymptotic normality of the debiased lasso transfer AHR estimator. Confidence intervals and hypothesis tests for each component can be constructed. When the transferable sources are unknown, a data‐driven source detection algorithm is proposed with theoretical guarantee. Numerical studies verify the performance of our proposed estimator and confidence intervals, and an application to Genotype‐Tissue Expression data is also presented.
自适应胡贝尔回归的双偏移转移学习
通过利用源数据的信息来提高目标数据的拟合性能,高维线性回归模型的迁移学习估计近来备受关注,但很少有研究关注重尾/非对称误差情况下的统计推断和稳健学习。本文利用自适应胡贝尔回归(AHR)来实现偏差和稳健性的权衡,提出了一种具有高维协变量的稳健迁移学习算法,然后基于去偏套索方法构建了有效的置信区间和假设检验。在已知可转移源的情况下,首先提出了一个两步瓣化转移 AHR 估计器,并建立了误差边界。为了纠正 lasso 惩罚造成的偏差,考虑了基于装饰相关得分方程的统一除杂框架,以建立除杂 lasso 转移 AHR 估计器的渐近正态性。可以为每个组成部分构建置信区间和假设检验。当可转移源未知时,提出了一种具有理论保证的数据驱动源检测算法。数值研究验证了我们提出的估计器和置信区间的性能,并介绍了基因型-组织表达数据的应用。
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
Scandinavian Journal of Statistics
Scandinavian Journal of Statistics 数学-统计学与概率论
CiteScore
1.80
自引率
0.00%
发文量
61
审稿时长
6-12 weeks
期刊介绍: The Scandinavian Journal of Statistics is internationally recognised as one of the leading statistical journals in the world. It was founded in 1974 by four Scandinavian statistical societies. Today more than eighty per cent of the manuscripts are submitted from outside Scandinavia. It is an international journal devoted to reporting significant and innovative original contributions to statistical methodology, both theory and applications. The journal specializes in statistical modelling showing particular appreciation of the underlying substantive research problems. The emergence of specialized methods for analysing longitudinal and spatial data is just one example of an area of important methodological development in which the Scandinavian Journal of Statistics has a particular niche.
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