Quantum Algorithm for Spectral Regression for Regularized Subspace Learning
In this paper, we propose an efficient quantum algorithm for spectral regression which is a dimensionality reduction framework based on the regression and spectral graph analysis. The quantum algorithm involves two core subroutines: the quantum principal eigenvectors analysis and the quantum ridge r...
Main Authors: | Fan-Xu Meng, Xu-Tao Yu, Rui-Qing Xiang, Zai-Chen Zhang |
---|---|
Format: | Article |
Language: | English |
Published: |
IEEE
2019-01-01
|
Series: | IEEE Access |
Subjects: | |
Online Access: | https://ieeexplore.ieee.org/document/8574891/ |
Similar Items
-
Utilizing support vector and kernel ridge regression methods in spectral reconstruction
by: Ida Rezaei, et al.
Published: (2023-05-01) -
Generalized Support Vector Regression and Symmetry Functional Regression Approaches to Model the High-Dimensional Data
by: Mahdi Roozbeh, et al.
Published: (2023-06-01) -
Comparison of Least Squares, Ridge Regression and Principal Component Approaches in the Presence of Multicollinearity in Regression Analysis
by: Soner Çankaya, et al.
Published: (2019-08-01) -
The Comparison Between Different Approaches to Overcome the Multicollinearity Problem in Linear Regression Models
by: Hazim Mansoor Gorgees, et al.
Published: (2018-05-01) -
Theory of Ridge Regression Estimation with Applications /
by: A.K. Md. Ehsanes Saleh author, et al.
Published: (2019)