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Multiscale co-clustering for tensor data based on canonical polyadic decomposition and slice-wise factorization

机译:基于规范多adic分解的张量数据和切片明智分解的多尺度共聚类

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摘要

The analysis of tensor data is necessary in many applications. Similar to bi-clustering of matrix data, multiscale co-clustering can simultaneously extract coherent patterns along all or partial modes of a tensor. However, numerical methods for co-clustering have not reached the level of maturity of bi-clustering. In this paper, we present a theoretical framework to perform co-clustering for multidimensional data based on tensor and matrix decomposition. According to the proposed principle, we first develop an alternative algorithm for tensor canonical decomposition with full-rank constraint on slice-wise factorization (FRSF). Owing to the least squares principle and the constraint inherent in the resolution of multidimensional data, FRSF provides a natural way to avoid two-factor degeneracy and renders the resolved profiles stable with respect to high dimensionality. FRSF maintains a high convergence rate and greatly reduces the computational complexity with the compression technique based on matrix singular value decomposition. Furthermore, the algebraic expression of co-clusters in tensor data can be mapped to some linear structures in the factor spaces of FRSF. We employ a linear grouping algorithm to identify these geometrical patterns in the factor spaces. Finally, the combination of the linear grouping points along every mode successfully supports the detection of co-clusters in tensor data. On the basis of the proposed framework, a flexible and fast FRSF-based co-clustering algorithm is developed. Extensive simulations and experiment data analysis demonstrate the validity and efficiency of FRSF and the proposed co-clustering algorithm. (C) 2019 Published by Elsevier Inc.
机译:许多应用中需要对张量数据的分析。类似于矩阵数据的双聚类,多尺度共聚类可以同时沿着张量的全部或部分模式提取相干图案。然而,共聚类的数值方法尚未达到双聚类成熟程度。在本文中,我们提出了一种理论框架,用于基于张量和矩阵分解来执行用于多维数据的共聚类。根据提出的原则,我们首先为张量分解的替代算法,对切片明智分解(FRSF)的全级约束。由于最小的正方形原理和多维数据分辨中固有的约束,FRSF提供了一种自然的方式来避免双因素退化,并使分辨的曲线相对于高维度稳定。 FRSF维持高收敛速度,大大降低了基于矩阵奇异值分解的压缩技术的计算复杂性。此外,张量数据中的共簇的代数表达可以映射到FRSF的因子空间中的一些线性结构。我们采用线性分组算法来识别因子空间中的这些几何图案。最后,沿着每个模式的线性分组点的组合成功地支持张量数据中的共簇的检测。在提出的框架的基础上,开发了一种灵活和快速的FRSF的共聚类算法。广泛的仿真和实验数据分析证明了FRSF的有效性和效率和所提出的共聚类算法。 (c)2019由elsevier公司出版

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