协变量
计量经济学
预测建模
计算机科学
数据挖掘
数学
机器学习
人工智能
作者
Xinyu Zhang,Huihang Liu,Yizheng Wei,Yanyuan Ma
标识
DOI:10.1080/07350015.2023.2166515
摘要
We consider prediction based on a main model. When the main model shares partial parameters with several other helper models, we make use of the additional information. Specifically, we propose a Model Averaging Prediction (MAP) procedure that takes into account data related to the main model as well as data related to the helper models. We allow the data related to different models to follow different structures, as long as they share some common covariate effect. We show that when the main model is misspecified, MAP yields the optimal weights in terms of prediction. Further, if the main model is correctly specified, then MAP will automatically exclude all incorrect helper models asymptotically. Simulation studies are conducted to demonstrate the superior performance of MAP. We further implement MAP to analyze a dataset related to the probability of credit card default.
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