具有Tucker秩约束的张量流形

S. Chang, Ziyan Luo, L. Qi
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引用次数: 0

摘要

低秩张量近似在从科学到工程应用的各种张量分析任务中起着至关重要的作用。低秩张量近似有几个重要的问题。首先,在不检查可行性的情况下给出一个近似张量的秩。其次,即使存在这样的近似张量,但目前提出的算法不能提供全局最优性保证。本文定义了Tucker秩的低秩张量集(LRTS),它是具有特定Tucker秩的张量流形的并集。我们提出了一种半代数描述LRTS的方法,并描述了这种LRTS的性质,如张量流形的可行性、LRTS的方程/非方程大小、代数维数等。进一步,如果张量逼近的代价函数为多项式型,例如Frobenius范数,我们提出了一种具有Tucker秩约束的张量逼近算法,并通过LRTS的半代数表征确定的临界集证明了该算法的全局最优性。
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Tensor Manifold with Tucker Rank Constraints
Low-rank tensor approximation plays a crucial role in various tensor analysis tasks ranging from science to engineering applications. There are several important problems facing low-rank tensor approximation. First, the rank of an approximating tensor is given without checking feasibility. Second, even such approximating tensors exist, however, current proposed algorithms cannot provide global optimality guarantees. In this work, we define the low-rank tensor set (LRTS) for Tucker rank which is a union of manifolds of tensors with specific Tucker rank. We propose a procedure to describe LRTS semi-algebraically and characterize the properties of this LRTS, e.g., feasibility of tensors manifold, the equations/inequations size of LRTS, algebraic dimensions, etc. Furthermore, if the cost function for tensor approximation is polynomial type, e.g., Frobenius norm, we propose an algorithm to approximate a given tensor with Tucker rank constraints and prove the global optimality of the proposed algorithm through critical sets determined by the semi-algebraic characterization of LRTS.
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