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arxiv: 1507.04721 · v2 · pith:TVHECAQDnew · submitted 2015-07-16 · 🧮 math.NA

On Accelerating the Regularized Alternating Least Square Algorithm for Tensors

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keywords algorithmregularizedalternatingconvergenceleastfastralsrate
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In this paper, we discuss the acceleration of the regularized alternating least square (RALS) algorithm for tensor approximation. We propose a fast iterative method using a Aitken-Stefensen like updates for the regularized algorithm. Through numerical experiments, the fast algorithm demonstrate a faster convergence rate for the accelerated version in comparison to both the standard and regularized alternating least squares algorithms. In addition, we analyze the global convergence based on the Kurdyka- Lojasiewicz inequality as well as show that the RALS algorithm has a linear local convergence rate.

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