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Scale-constrained approaches for maximum likelihood estimation and model selection of clusterwise linear regression models

机译:规模约束方法用于最大似然估计和聚类线性回归模型的模型选择

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摘要

We consider an equivariant approach imposing data-driven bounds for the variances to avoid singular and spurious solutions in maximum likelihood estimation of clusterwise linear regression models. We investigate its use in the choice of the number of components and we propose a computational shortcut, which significantly reduces the computational time needed to tune the bounds on the data. In the simulation study and the two real-data applications, we show that the proposed methods guarantee a reliable assessment of the number of components compared to standard unconstrained methods, together with accurate model parameters estimation and cluster recovery.
机译:我们考虑一种等方差方法,为方差强加数据驱动的边界,以避免在聚类线性回归模型的最大似然估计中出现奇异和虚假解。我们调查了它在选择组件数时的用途,并提出了一种计算捷径,该捷径显着减少了调整数据范围所需的计算时间。在仿真研究和两个实际数据应用中,我们表明,与标准的无约束方法相比,所提出的方法可确保对组件数量进行可靠的评估,并具有准确的模型参数估计和聚类恢复。

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