论文标题
计算具有结构化因子的大尺度矩阵和张量分解:统一的非凸优化透视图
Computing Large-Scale Matrix and Tensor Decomposition with Structured Factors: A Unified Nonconvex Optimization Perspective
论文作者
论文摘要
拟议的文章旨在为结构化矩阵和张量分解的计算方面提供全面的教程。 Unlike existing tutorials that mainly focus on {\it algorithmic procedures} for a small set of problems, e.g., nonnegativity or sparsity-constrained factorization, we take a {\it top-down} approach: we start with general optimization theory (e.g., inexact and accelerated block coordinate descent, stochastic optimization, and Gauss-Newton methods) that covers a wide range of factorization具有多种限制和工程兴趣正规化条款的问题。然后,我们将“在引擎盖下”以这些引入的原理展示特定的算法设计。我们特别关注结构化张量和基质分解的最新算法发展(例如,基于随机尺寸的随机素描和自适应阶梯大小的随机优化和结构探索的二阶算法),这是艺术的状态 - 但与文学相比,与{\ it block block block conction相比,对{\ it block bocked coordation conction conctation bcd contect}(bcd}(bcd)(bcd)(bcd)(bcd)(bcd)。我们希望该文章在结构化分解领域具有教育价值观,并希望在这个重要而令人兴奋的方向上刺激更多的研究。
The proposed article aims at offering a comprehensive tutorial for the computational aspects of structured matrix and tensor factorization. Unlike existing tutorials that mainly focus on {\it algorithmic procedures} for a small set of problems, e.g., nonnegativity or sparsity-constrained factorization, we take a {\it top-down} approach: we start with general optimization theory (e.g., inexact and accelerated block coordinate descent, stochastic optimization, and Gauss-Newton methods) that covers a wide range of factorization problems with diverse constraints and regularization terms of engineering interest. Then, we go `under the hood' to showcase specific algorithm design under these introduced principles. We pay a particular attention to recent algorithmic developments in structured tensor and matrix factorization (e.g., random sketching and adaptive step size based stochastic optimization and structure-exploiting second-order algorithms), which are the state of the art---yet much less touched upon in the literature compared to {\it block coordinate descent} (BCD)-based methods. We expect that the article to have an educational values in the field of structured factorization and hope to stimulate more research in this important and exciting direction.