关于稀疏集成方法:在COVID-19演变短期预测中的应用

On sparse ensemble methods: An application to short-term predictions of the evolution of COVID-19

European Journal of Operational Research · 2021
被引 21
ABS 4

中文导读

提出一种数学优化模型来构建稀疏集成回归器,在保证预测精度的同时减少基回归器数量,避免过拟合,并以COVID-19实际数据验证效果。

Abstract

Since the seminal paper by Bates and Granger in 1969, a vast number of ensemble methods that combine different base regressors to generate a unique one have been proposed in the literature. The so-obtained regressor method may have better accuracy than its components, but at the same time it may overfit, it may be distorted by base regressors with low accuracy, and it may be too complex to understand and explain. This paper proposes and studies a novel Mathematical Optimization model to build a sparse ensemble, which trades off the accuracy of the ensemble and the number of base regressors used. The latter is controlled by means of a regularization term that penalizes regressors with a poor individual performance. Our approach is flexible to incorporate desirable properties one may have on the ensemble, such as controlling the performance of the ensemble in critical groups of records, or the costs associated with the base regressors involved in the ensemble. We illustrate our approach with real data sets arising in the COVID-19 context.

集成学习数学优化机器学习预测模型COVID-19