Modeling with multidimensional arrays, or tensors, often presents a problem due to high dimensionality. In addition, these structures typically exhibit inherent sparsity, requiring the use of regularization methods to properly characterize an association between a tensor covariate and a scalar response. We propose a Bayesian method to efficiently model a scalar response with a tensor covariate using the Tucker tensor decomposition in order to retain the spatial relationship within a tensor coefficient, while reducing the number of parameters varying within the model and applying regularization methods. Simulated data are analyzed to compare the model to recently proposed methods. A neuroimaging analysis using data from the Alzheimer's Data Neuroimaging Initiative is included to illustrate the benefits of the model structure in making inference.
翻译:此外,这些结构通常表现出固有的宽度,需要使用正规化方法来适当描述高共变和卡路里反应之间的关联。我们建议采用巴伊西亚方法,利用塔克高变分解法,以高共变法有效模拟卡路里反应,以保持高共系数内的空间关系,同时减少模型内不同参数的数量,并采用正规化方法。对模拟数据进行分析,将模型与最近提议的方法进行比较。我们列入了利用阿尔茨海默氏数据神经成像倡议的数据进行神经成形分析,以说明模型结构在推断方面的益处。