Statistical modelling strategy is the key for success in data analysis. The trade-off between flexibility and parsimony plays a vital role in statistical modelling. In clustered data analysis, in order to account for the heterogeneity between the clusters, certain flexibility is necessary in the modelling, yet parsimony is also needed to guard against the complexity and account for the homogeneity among the clusters. In this paper, we propose a flexible and parsimonious modelling strategy for clustered data analysis. The strategy strikes a nice balance between flexibility and parsimony, and accounts for both heterogeneity and homogeneity well among the clusters, which often come with strong practical meanings. In fact, its usefulness has gone beyond clustered data analysis, it also sheds promising lights on transfer learning. An estimation procedure is developed for the unknowns in the resulting model, and asymptotic properties of the estimators are established. Intensive simulation studies are conducted to demonstrate how well the proposed methods work, and a real data analysis is also presented to illustrate how to apply the modelling strategy and associated estimation procedure to answer some real problems arising from real life.
翻译:统计建模战略是数据分析成功的关键。灵活性和贫乏之间的权衡在统计建模中起着关键作用。在集成数据分析中,为了说明各组群之间的异质性,在建模中需要有一定的灵活性,但还需要有一定的灵活性,以防范各组群之间的复杂性和同质性。在本文件中,我们提议为集成数据分析制定灵活和庸俗的建模战略。该战略在灵活性和贫乏性之间取得了良好的平衡,并说明了各组群中的异质性和同质性,而这些组群往往具有很强的实际意义。事实上,它的作用已经超出了集成数据分析的范围,它也为转移学习提供了很有希望的灯光。它为产生模型的未知因素和估计者缺乏的特性制定了一种估计程序。进行了密集的模拟研究,以说明拟议方法如何很好地发挥作用,还进行了真正的数据分析,以说明如何应用建模战略和相关的估计程序来解决现实生活中产生的一些实际问题。