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High-Order CPD Estimation with Dimensionality Reduction Using a Tensor Train Model

机译:使用张量火车模型进行降维的高阶CPD估计

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The canonical polyadic decomposition (CPD) is one of the most popular tensor-based analysis tools due to its usefulness in numerous fields of application. The Q-order CPD is parametrized by Q matrices also called factors which have to be recovered. The factors estimation is usually carried out by means of the alternating least squares (ALS) algorithm. In the context of multi-modal big data analysis, i.e., large order (Q) and dimensions, the ALS algorithm has two main drawbacks. Firstly, its convergence is generally slow and may fail, in particular for large values of Q, and secondly it is highly time consuming. In this paper, it is proved that a Q-order CPD of rank-R is equivalent to a train of Q 3-order CPD(s) of rank-R. In other words, each tensor train (TT)-core admits a 3-order CPD of rank-R. Based on the structure of the TT-cores, a new dimensionality reduction and factor retrieval scheme is derived. The proposed method has a better robustness to noise with a smaller computational cost than the ALS algorithm.
机译:由于其在许多应用领域中的有用性,规范多峰分解(CPD)是最流行的基于张量的分析工具之一。 Q阶CPD由Q矩阵参数化,Q矩阵也称为必须恢复的因子。通常通过交替最小二乘(ALS)算法进行因子估计。在多模式大数据分析(即大阶(Q)和维度)的情况下,ALS算法有两个主要缺点。首先,它的收敛通常很慢并且可能会失败,特别是对于较大的Q值,其次是非常耗时的。在本文中,证明了等级R的Q阶CPD等同于等级R的Q 3阶CPD列。换句话说,每个张量链(TT)核心都接受等级R的3阶CPD。基于TT核的结构,推导了一种新的降维和因子检索方案。与ALS算法相比,所提出的方法具有更好的抗噪声能力,且计算量较小。

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