Semi-supervised learning for linear extremile regression
Rong Jiang, Keming Yu, Jiangfeng Wang

TL;DR
This paper introduces a linear extremile regression method with semi-supervised learning that improves estimation efficiency and handles high-dimensional data, demonstrated through simulations and real data.
Contribution
It proposes a novel linear extremile regression definition with $\
Findings
Estimators achieve $\
Semi-supervised approach enhances prediction accuracy in high-dimensional settings
Abstract
Extremile regression, as a least squares analog of quantile regression, is potentially useful tool for modeling and understanding the extreme tails of a distribution. However, existing extremile regression methods, as nonparametric approaches, may face challenges in high-dimensional settings due to data sparsity, computational inefficiency, and the risk of overfitting. While linear regression serves as the foundation for many other statistical and machine learning models due to its simplicity, interpretability, and relatively easy implementation, particularly in high-dimensional settings, this paper introduces a novel definition of linear extremile regression along with an accompanying estimation methodology. The regression coefficient estimators of this method achieve -consistency, which nonparametric extremile regression may not provide. In particular, while semi-supervised…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Statistical Methods and Models · Financial Risk and Volatility Modeling
