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Exact and Stable Recovery of Pairwise Interaction Tensors

机译:成对相互作用张量的精确稳定地回收

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Tensor completion from incomplete observations is a problem of significant practical interest. However, it is unlikely that there exists an efficient algorithm with provable guarantee to recover a general tensor from a limited number of observations. In this paper, we study the recovery algorithm for pairwise interaction tensors, which has recently gained considerable attention for modeling multiple attribute data due to its simplicity and effectiveness. Specifically, in the absence of noise, we show that one can exactly recover a pairwise interaction tensor by solving a constrained convex program which minimizes the weighted sum of nuclear norms of matrices from O(nr log~2(n)) observations. For the noisy cases, we also prove error bounds for a constrained convex program for recovering the tensors. Our experiments on the synthetic dataset demonstrate that the recovery performance of our algorithm agrees well with the theory. In addition, we apply our algorithm on a temporal collaborative filtering task and obtain state-of-the-art results.
机译:不完全观察的张越完成是一个重要的实际兴趣的问题。然而,不太可能存在有效的保证能够从有限数量的观察结果中恢复一般张量的有效保证。在本文中,我们研究了成对交互张量的恢复算法,最近由于其简单和有效性而导致的多个属性数据进行了相当大的关注。具体而言,在没有噪声的情况下,我们示出了通过求解受约束的凸面的程序可以精确地恢复成对交互张量,这最小化来自O的矩阵的核规范的加权之和(NR Log〜2(n))观察。对于嘈杂的情况,我们还证明了用于恢复张量的约束凸程序的错误限制。我们对合成数据集的实验表明,我们的算法的恢复性能与理论很好。此外,我们将算法应用于时间的协作过滤任务并获得最先进的结果。

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