Matrix Factorization at the Frontier of Non-convex Optimizations: Abstract for SIGMETRICS 2017 Rising Star Award Talk

Sewoong Oh
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引用次数: 0

Abstract

Principal Component Analysis (PCA) and Canonical Component Analysis (CCA) are two of the few examples of non-convex optimization problems that can be solved efficiently with sharp guarantees. This is achieved by the classical and well-established understanding of matrix factorizations. Recently, several new theoretical and algorithmic challenges have arisen in statistical learning over matrix factorizations, motivated by various real-world applications. Despite the inherent non-convex nature of these problem, efficient algorithms are being discovered with provable guarantees, extending the frontier of our understanding of non-convex optimization problems. I will present several recent results in this area in applications to matrix completion and sensing, crowdsourcing, ranking, and tensor factorization.
矩阵分解在非凸优化的前沿:SIGMETRICS 2017新星奖演讲摘要
主成分分析(PCA)和规范成分分析(CCA)是为数不多的可以在明确保证下有效解决的非凸优化问题的两个例子。这是通过对矩阵分解的经典和完善的理解来实现的。最近,由于各种现实世界的应用,在矩阵分解的统计学习中出现了一些新的理论和算法挑战。尽管这些问题具有固有的非凸性质,但人们正在发现具有可证明保证的有效算法,扩展了我们对非凸优化问题理解的前沿。我将介绍该领域在矩阵补全和传感、众包、排序和张量分解方面的几个最新成果。
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