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Extrapolated Alternating Algorithms for Approximate Canonical Polyadic Decomposition

机译:近似规范多态分解的外推交替算法

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Tensor decompositions have become a central tool in machine learning to extract interpretable patterns from multiway arrays of data. However, computing the approximate Canonical Polyadic Decomposition (aCPD), one of the most important tensor decomposition model, remains a challenge. In this work, we propose several algorithms based on extrapolation that improve over existing alternating methods for aCPD. We show on several simulated and real data sets that carefully designed extrapolation can significantly improve the convergence speed hence reduce the computational time, especially in difficult scenarios.
机译:张量分解已成为机器学习中从多路数据数组中提取可解释模式的主要工具。但是,计算最重要的张量分解模型之一的近似规范多单元分解(aCPD)仍然是一个挑战。在这项工作中,我们提出了几种基于外推的算法,这些算法对现有的aCPD交替方法进行了改进。我们在几个模拟的和真实的数据集上表明,精心设计的外推法可以显着提高收敛速度,从而减少计算时间,尤其是在困难的情况下。

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