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The LASSO on latent indices for regression modeling with ordinal categorical predictors

机译:rasso对秩序分类预测因子回归建模的潜在指标

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Many applications of regression models involve ordinal categorical predictors. Two common approaches for handling ordinal predictors are to form a set of dummy variables, or employ a two stage approach where dimension reduction is first applied and then the response is regressed against the predicted latent indices. Both approaches have drawbacks, with the former running into a high-dimensional problem especially if interactions are considered, while the latter separates the prediction of the latent indices from the construction of the regression model. To overcome these challenges, a new approach called the LASSO on Latent Indices (LoLI) for handling ordinal predictors in regression is proposed, which involves jointly constructing latent indices for each or for groups of ordinal predictors and modeling the response directly as a function of these. LoLI borrows strength from the response to more accurately predict the latent indices, leading to better estimation of the corresponding effects. Furthermore, LoLI incorporates a LASSO type penalty to perform hierarchical selection, with interaction terms selected only if both parent main effects are included. Simulations show that LoLI can outperform the dummy variable and two stage approaches in selection and prediction performance. Applying LoLI to an Australian household-based panel identified three dimensions of psychosocial workplace quality (job demands, stress, and security) which affect an individual's mental health in an additive and pairwise interactive manner. (C) 2020 Elsevier B.V. All rights reserved.
机译:回归模型的许多应用涉及序列分类预测因子。处理序序预测器的两个常见方法是形成一组虚拟变量,或者采用两个阶段方法,其中首先应用尺寸减少,然后响应对预测的潜在指标回归。两种方法都有缺点,前者跑到高维问题中,特别是如果考虑相互作用,则后者将潜在指数的预测从回归模型的构造分开。为了克服这些挑战,提出了一种新的方法,称为左旋潜在指数(LOLI)用于处理回归中的顺序预测器的潜在指标(LOLI),这涉及共同构建每个或用于序列预测器组的潜在指标,并直接根据这些函数建模响应。 LOLI借助响应更准确地预测潜在指标的强度,导致更好地估计相应的效果。此外,LOLI包含一个套索类型的惩罚来执行分层选择,只有在包括父主效应中时才选择的交互项。仿真表明,LOLI可以优于伪变量和选择和预测性能的两个阶段方法。将萝莉应用于澳大利亚家庭的小组确定了一系列心理社会工作场所质量(工作要求,压力和安全性)的三维,影响个人的心理健康,以添加剂和成对交互方式。 (c)2020 Elsevier B.V.保留所有权利。

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