Department of Statistics, Universidad de Salamanca, Facultad de Medicina, Campus Miguel de Unamuno, Salamanca, 37007, Spain.
Behav Res Methods. 2024 Apr;56(4):3873-3890. doi: 10.3758/s13428-024-02379-3. Epub 2024 Apr 5.
In behavioral research, it is very common to have manage multiple datasets containing information about the same set of individuals, in such a way that one dataset attempts to explain the others. To address this need, in this paper the Tucker3-PCovR model is proposed. This model is a particular case of PCovR models which focuses on the analysis of a three-way data array and a two-way data matrix where the latter plays the explanatory role. The Tucker3-PCovR model reduces the predictors to a few components and predicts the criterion by using these components and, at the same time, the three-way data is fitted by the Tucker3 model. Both the reduction of the predictors and the prediction of the criterion are done simultaneously. An alternating least squares algorithm is proposed to estimate the Tucker3-PCovR model. A biplot representation is presented to facilitate the interpretation of the results. Some applications are made to empirical datasets from the field of psychology.
在行为研究中,经常需要管理多个包含同一组个体信息的数据集,以便一个数据集试图解释其他数据集。为了满足这一需求,本文提出了 Tucker3-PCovR 模型。该模型是 PCovR 模型的一个特例,专注于分析三向数据数组和双向数据矩阵,其中后者起解释作用。Tucker3-PCovR 模型将预测变量减少到几个分量,并使用这些分量预测准则,同时通过 Tucker3 模型拟合三向数据。预测变量的减少和准则的预测都是同时进行的。提出了一种交替最小二乘法算法来估计 Tucker3-PCovR 模型。呈现了一种双标图表示法,以方便解释结果。对心理学领域的一些经验数据集进行了应用。