Due to the multi-linearity of tensors, most algorithms for tensor optimization problems are designed based on the block coordinate descent method. Such algorithms are widely employed by practitioners for their implementability and effectiveness. However, these algorithms usually suffer from the lack of theoretical guarantee of global convergence and analysis of convergence rate. In this paper, we propose a block coordinate descent type algorithm for the low rank partially orthogonal tensor approximation problem and analyse its convergence behaviour. To achieve this, we carefully investigate the variety of low rank partially orthogonal tensors and its geometric properties related to the parameter space, which enable us to locate KKT points of the concerned optimization problem. With the aid of these geometric properties, we prove without any assumption that: (1) Our algorithm converges globally to a KKT point; (2) For any given tensor, the algorithm exhibits an overall sublinear convergence with an explicit rate which is sharper than the usual $O(1/k)$ for first order methods in nonconvex optimization; {(3)} For a generic tensor, our algorithm converges $R$-linearly.
翻译:由于高压的多线性,大多数关于强力优化问题的算法都是根据分块协调后位法设计的,这种算法被执业者广泛用于实施和效果。然而,这些算法通常缺乏全球趋同率的理论保证和分析。在本文中,我们提议为低级部分正方位高压近距离问题提供一个区块协调的下位算法,并分析其趋同行为。为了做到这一点,我们仔细调查了与参数空间有关的低级部分正方位高压及其几何特性,从而使我们能够找到相关优化问题的KKT点。我们用这些几何特性来证明,我们没有任何假设:(1) 我们的算法在全球趋同KKT点;(2) 对于任何特定的数,算法显示整个亚线性趋同率比常规的$(1/k)美元更清晰,用于非convex 优化的第一顺序方法;{(3)}对于通用的光调调调法,我们的算法将美元-线状相趋近。