This paper proposes a criterion for detecting change structures in tensor data. To accommodate tensor structure with structural mode that is not suitable to be equally treated and summarized in a distance to measure the difference between any two adjacent tensors, we define a mode-based signal-screening Frobenius distance for the moving sums of slices of tensor data to handle both dense and sparse model structures of the tensors. As a general distance, it can also deal with the case without structural mode. Based on the distance, we then construct signal statistics using the ratios with adaptive-to-change ridge functions. The number of changes and their locations can then be consistently estimated in certain senses, and the confidence intervals of the locations of change points are constructed. The results hold when the size of the tensor and the number of change points diverge at certain rates, respectively. Numerical studies are conducted to examine the finite sample performances of the proposed method. We also analyze two real data examples for illustration.
翻译:本文提出了一种用于检测张量数据变化结构的准则。为了适应具有不适合等量处理和汇总的结构模式的张量结构,并计算相邻张量之间的差异距离,我们定义了一种基于模式的信号筛选 Frobenius 距离来处理张量数据中的稠密和稀疏模型结构。作为一项通用距离度量,它也可以处理没有结构模式的情况。基于该距离,我们使用自适应变化的 ridge 函数构造信号统计信息。然后可以以某种方式一致地估计变化次数及其位置,并构建位置的置信区间。当张量的大小和变化点的数量分别发散时,结果保持不变。进行了数值研究以检查所提出的方法的有限样本性能。我们还分析了两个实际数据示例以进行说明。