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Joint detection for functional polynomial regression with autoregressive errors
Authors:Tao Zhang  Pengjie Dai
Institution:1. School of Science, Guangxi University of Science and Technology, Liuzhou, China;2. Guangxi Colleges and Universities Key Laboratory of Mathematics and Statistical Model, Guilin, China;3. School of Business, Renmin University of China, Beijing, China
Abstract:In this article, we are concerned with detecting the true structure of a functional polynomial regression with autoregressive (AR) errors. The first issue is to detect which orders of the polynomial are significant in functional polynomial regression. The second issue is to detect which orders of the AR process in the AR errors are significant. We propose a shrinkage method to deal with the two problems: polynomial order selection and autoregressive order selection. Simulation studies demonstrate that the new method can identify the true structure. One empirical example is also presented to illustrate the usefulness of our method.
Keywords:Autoregressive errors  Functional polynomial regression model  Principal component  Model detection  
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