Convergence results for projected line-search methods on varieties of low-rank matrices via Łojasiewicz inequality

The aim of this paper is to derive convergence results for projected line-search methods on the real-algebraic variety of real matrices of rank at most . Such methods extend Riemannian optimization methods, which are successfully used on the smooth manifold of rank- matrices, to its closure by taking steps along gradient-related directions in the tangent cone, and afterwards projecting back to . Considering such a method circumvents the difficulties which arise from the nonclosedness and the unbounded curvature of . The pointwise convergence is obtained for real-analytic functions on the basis of a \L{}ojasiewicz inequality for the projection of the antigradient to the tangent cone. If the derived limit point lies on the smooth part of , i.e. in , this boils down to more or less known results, but with the benefit that asymptotic convergence rate estimates (for specific step-sizes) can be obtained without an a priori curvature bound, simply from the fact that the limit lies on a smooth manifold. At the same time, one can give a convincing justification for assuming critical points to lie in : if is a critical point of on , then either has rank , or .
View on arXiv