2023
DOI: 10.36227/techrxiv.19704034.v4
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Tracking Online Low-Rank Approximations of Higher-Order Incomplete Streaming Tensors

Abstract: <p><strong>Abstract:</strong>  In this paper, we propose two new provable algorithms for tracking online low-rank approximations of high-order streaming tensors with missing data. The first algorithm, dubbed adaptive Tucker decomposition (ATD), minimizes a weighted recursive least-squares cost function to obtain the tensor factors and the core tensor in an efficient way, thanks to the alternating minimization framework and the randomized sketching technique. Under the Canonical Polyadic (CP) … Show more

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