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Secrets of Matrix Factorization: Approximations, Numerics, Manifold Optimization and Random Restarts

机译:矩阵分解的秘诀:逼近,数值,流形优化和随机重启

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Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many computer vision and machine learning tasks, and is also related to a broader class of nonlinear optimization problems such as bundle adjustment. The problem has received much attention recently, with renewed interest in variable-projection approaches, yielding dramatic improvements in reliability and speed. However, on a wide class of problems, no one approach dominates, and because the various approaches have been derived in a multitude of different ways, it has been difficult to unify them. This paper provides a unified derivation of a number of recent approaches, so that similarities and differences are easily observed. We also present a simple meta-algorithm which wraps any existing algorithm, yielding 100% success rate on many standard datasets. Given 100% success, the focus of evaluation must turn to speed, as 100% success is trivially achieved if we do not care about speed. Again our unification allows a number of generic improvements applicable to all members of the family to be isolated, yielding a unified algorithm that outperforms our re-implementation of existing algorithms, which in some cases already outperform the original authors' publicly available codes.
机译:缺少数据的矩阵分解(或低秩矩阵完成)是许多计算机视觉和机器学习任务中的关键计算,并且还与更广泛的非线性优化问题(例如束调整)有关。最近,随着可变投影方法的重新引起人们的关注,该问题受到了极大的关注,从而在可靠性和速度方面产生了显着的进步。但是,在各种各样的问题上,没有一种方法能独占,头,并且由于以多种不同的方式派生了各种方法,因此很难统一它们。本文提供了许多最新方法的统一推导,因此很容易观察到相似之处和不同之处。我们还提出了一个简单的元算法,该算法封装了任何现有算法,在许多标准数据集上的成功率均为100%。给定100%的成功,评估的重点必须转向速度,因为如果我们不关心速度,那么100%的成功就是微不足道的。同样,我们的统一允许隔离适用于该家族所有成员的许多通用改进,从而产生一个统一的算法,该算法优于我们对现有算法的重新实现,在某些情况下,该算法已经优于原始作者的公开代码。

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