We study the non-convex matrix factorization approach to matrix completion via Riemannian geometry. Based on an optimization formulation over a Grassmannian manifold, we characterize the landscape based on the notion of principal angles between subspaces. For the fully observed case, our results show that there is a region in which the cost is geodesically convex, and outside of which all critical points are strictly saddle. We empirically study the partially observed case based on our findings.
翻译:我们通过里伊曼尼几何学研究非分流矩阵要素化方法来完成矩阵。我们根据格拉斯曼多方形的优化配方,根据分空间之间主要角度的概念来描述地貌。在充分观察的情况下,我们的结果显示,有一个区域的成本是大地分流,所有临界点都严格处于边缘。我们根据我们的调查结果对部分观察的案例进行了经验性研究。