The problem of low rank approximation is ubiquitous in science. Traditionally this problem is solved in unitary invariant norms such as Frobenius or spectral norm due to existence of efficient methods for building approximations. However, recent results reveal the potential of low rank approximations in Chebyshev norm, which naturally arises in many applications. In this paper we tackle the problem of building optimal rank-1 approximations in the Chebyshev norm. We investigate the properties of alternating minimization algorithm for building the low rank approximations and demonstrate how to use it to construct optimal rank-1 approximation. As a result we propose an algorithm that is capable of building optimal rank-1 approximations in Chebyshev norm for small matrices.
翻译:低级近似问题在科学中普遍存在。 传统上,由于存在高效的近近似构建方法,这个问题在单一的不变规范中解决,如Frobenius或光谱规范。 但是,最近的结果揭示了Chebyshev 规范中低级近近近潜力,这自然在许多应用中产生。 在本文中,我们处理在Chebyshev规范中建立最佳一级近近近的问题。 我们调查了建立低级近近近似的交替最小化算法的特性,并展示了如何利用它构建最佳一级近近似。 因此,我们提出了一个算法,能够在Chebyshev规范中为小型矩阵建立最佳一级近近近。