具有多个阈值变量和多个结构断裂的分段回归模型

Pub Date : 2023-02-06 DOI:10.1002/cjs.11764
Pan Liu, Jialiang Li
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引用次数: 0

摘要

我们提出了一种新的模型平均方法,用于研究具有多个阈值变量和多个结构断点的分段回归模型。我们首先使用两阶段变化点检测方法拟合一系列模型,每个模型都有一个阈值变量和其域内的多个断点。然后,通过频繁模型平均法将这些模型组合在一起,产生一个加权集合。因此,我们的分段回归模型平均(SRMA)方法可以帮助识别异质性研究人群中的复杂亚组。确定模型平均中的最优权重是一个关键步骤,我们采用了熟悉的非凹式惩罚估计方法。通过确定各个拟合模型和估计权重的一致性,我们为 SRMA 提供了理论支持。我们进行了数值研究,以评估其在低维和高维环境中的性能,并将我们提出的方法与现有的各种替代分组估计方法进行了比较。分析了两个真实的经济数据实例,以说明我们的方法。
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Segment regression model average with multiple threshold variables and multiple structural breaks

We propose a new model averaging approach to investigate segment regression models with multiple threshold variables and multiple structural breaks. We first fit a series of models, each with a single threshold variable and multiple breaks over its domain, using a two-stage change point detection method. Then these models are combined together to produce a weighted ensemble through a frequentist model averaging approach. Consequently, our segment regression model averaging (SRMA) method may help identify complicated subgroups in a heterogeneous study population. A crucial step is to determine the optimal weights in the model averaging, and we follow the familiar non-concave penalty estimation approach. We provide theoretical support for SRMA by establishing the consistency of individual fitted models and estimated weights. Numerical studies are carried out to assess the performance in low- and high-dimensional settings, and comparisons are made between our proposed method and a wide range of existing alternative subgroup estimation methods. Two real economic data examples are analyzed to illustrate our methodology.

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