MNIST数据库
歧管(流体力学)
非线性降维
矩阵分解
人工智能
计算机科学
因式分解
二次方程
歧管对齐
正规化(语言学)
主成分分析
模式识别(心理学)
算法
数学
深度学习
降维
特征向量
机械工程
物理
几何学
量子力学
工程类
作者
Zheng Zhai,Hengchao Chen,Qiang Sun
标识
DOI:10.1109/tpami.2024.3380568
摘要
Matrix factorization is a popular framework for modeling low-rank data matrices. Motivated by manifold learning problems, this paper proposes a quadratic matrix factorization (QMF) framework to learn the curved manifold on which the dataset lies. Unlike local linear methods such as the local principal component analysis, QMF can better exploit the curved structure of the underlying manifold. Algorithmically, we propose an alternating minimization algorithm to optimize QMF and establish its theoretical convergence properties. Moreover, to avoid possible over-fitting, we then propose a regularized QMF algorithm and discuss how to tune its regularization parameter. Finally, we elaborate how to apply the regularized QMF to manifold learning problems. Experiments on a synthetic manifold learning dataset and three real datasets, including the MNIST handwritten dataset, a cryogenic electron microscopy dataset, and the Frey Face dataset, demonstrate the superiority of the proposed method over its competitors.
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