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Stable ALS approximation in the TT-format for rank-adaptive tensor completion

机译:稳定的ALS近似于TT格式,用于秩自适应张量完成

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摘要

Low rank tensor completion is a highly ill-posed inverse problem, particularly when the data model is not accurate, and some sort of regularization is required in order to solve it. In this article we focus on the calibration of the data model. For alternating optimization, we observe that existing rank adaption methods do not enable a continuous transition between manifolds of different ranks. We denote this characteristic as instability (under truncation). As a consequence of this property, arbitrarily small changes in the iterate can have arbitrarily large influence on the further reconstruction. We therefore introduce a singular value based regularization to the standard alternating least squares (ALS), which is motivated by averaging in microsteps. We prove its stability and derive a natural semi-implicit rank adaption strategy. We further prove that the standard ALS microsteps for completion problems are only stable on manifolds of fixed ranks, and only around points that have what we define as internal tensor restricted isometry property, iTRIP. In conclusion, numerical experiments are provided that show improvements of the reconstruction quality up to orders of magnitude in the new Stable ALS Approximation (SALSA) compared to standard ALS and the well known Riemannian optimization RTTC.
机译:低等级张量完成是一种高度均不存在的逆问题,特别是当数据模型不准确时,并且需要某种正规化以便解决。在本文中,我们专注于数据模型的校准。对于交替优化,我们观察到现有的等级适应方法不会在不同等级的歧管之间实现连续转换。我们用不稳定(截断)表示这种特征。由于这种财产的结果,迭代的任意较小的变化可能对进一步的重建有义程。因此,我们将基于奇异值的正则化引入标准交替最小二乘(ALS),这是通过在MicroSteps中平均来激励的。我们证明了它的稳定性并获得了自然的半隐式级别适应策略。我们进一步证明,标准的ALS Microsteps用于完成问题仅在固定等级的歧管上稳定,并且只有我们将其定义为内部张量限制的isOmity属性的点,而且只有围绕点。总之,与标准ALS和众所周知的Riemannian优化RTTC相比,提供了数值实验,显示了新的稳定ALS近似(SALSA)中的重建质量达到数量级的级。

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