Factorization-based gradient descent is a scalable and efficient algorithm for solving low-rank matrix completion. Recent progress in structured non-convex optimization has offered global convergence guarantees for gradient descent under certain statistical assumptions on the low-rank matrix and the sampling set. However, while the theory suggests gradient descent enjoys fast linear convergence to a global solution of the problem, the universal nature of the bounding technique prevents it from obtaining an accurate estimate of the rate of convergence. In this paper, we perform a local analysis of the exact linear convergence rate of gradient descent for factorization-based matrix completion for symmetric matrices. Without any additional assumptions on the underlying model, we identify the deterministic condition for local convergence of gradient descent, which only depends on the solution matrix and the sampling set. More crucially, our analysis provides a closed-form expression of the asymptotic rate of convergence that matches exactly with the linear convergence observed in practice. To the best of our knowledge, our result is the first one that offers the exact rate of convergence of gradient descent for matrix factorization in Euclidean space for matrix completion.
翻译:以梯度为基础的梯度下降是解决低级矩阵完成率的一个可扩展的高效算法。在结构化非碳化优化方面最近取得的进展为在低级矩阵和抽样组的某些统计假设下梯度下降提供了全球趋同保证。然而,尽管根据理论,梯度下降在快速线性趋同与这一问题的全球解决办法上具有一致作用,但约束技术的普遍性使它无法准确估计趋同率。在本文件中,我们对梯度下降的确切线性趋同率进行局部分析,以便以系数基数矩阵完成对称矩阵。在不进一步假设基本模型的情况下,我们确定梯度下降地方趋同的决定性条件,这只取决于解决办法矩阵和抽样组。更为重要的是,我们的分析提供了与实践中观察到的线性趋同率的封闭式趋同率。据我们所知,我们的结果是第一个为完成欧洲极地德空间的梯度因子化矩阵化提供精确的梯度趋同率。