The decomposition or approximation of a linear operator on a matrix space as a sum of Kronecker products plays an important role in matrix equations and low-rank modeling. The approximation problem in Frobenius norm admits a well-known solution via the singular value decomposition. However, the approximation problem in spectral norm, which is more natural for linear operators, is much more challenging. In particular, the Frobenius norm solution can be far from optimal in spectral norm. We describe an alternating optimization method based on semidefinite programming to obtain high-quality approximations in spectral norm, and we present computational experiments to illustrate the advantages of our approach.
翻译:矩阵空间线性操作员作为克罗涅克产品总和在矩阵方程式和低级模型中扮演重要角色的分解或近似作用。 Frobenius 规范的近似问题通过单值分解承认了众所周知的解决方案。然而,光谱规范中的近似问题(对于线性操作员来说更自然)更具挑战性。特别是,Frobenius规范解决方案在光谱规范中可能远非最佳。我们描述了一种基于半定式编程的交替优化方法,以获得光谱规范中高质量近似,我们提出计算实验,以说明我们方法的优势。