Morris Jeffrey S
The University of Texas, MD Anderson Cancer Center, Unit 1411, PO Box 301402, Houston, TX 77230-1402.
Stat Modelling. 2017 Feb;17(1-2):59-85. doi: 10.1177/1471082X16681875. Epub 2017 Feb 16.
In this article, Greven and Scheipl describe an impressively general framework for performing functional regression that builds upon the generalized additive modeling framework. Over the past number of years, my collaborators and I have also been developing a general framework for functional regression, functional mixed models, which shares many similarities with this framework, but has many differences as well. In this discussion, I compare and contrast these two frameworks, to hopefully illuminate characteristics of each, highlighting their respecitve strengths and weaknesses, and providing recommendations regarding the settings in which each approach might be preferable.
在本文中,格雷文和沙伊普尔描述了一个令人印象深刻的通用框架,用于执行基于广义相加模型框架的函数回归。在过去几年里,我和我的合作者也一直在开发一个用于函数回归、函数混合模型的通用框架,它与这个框架有许多相似之处,但也有很多不同之处。在本次讨论中,我将对这两个框架进行比较和对比,希望能阐明每个框架的特点,突出它们各自的优缺点,并针对每种方法可能更适用的场景提供建议。