Manifold construction and parameterization for nonlinear manifold-based model reduction
Abstract
References
Recommendations
Riemannian Manifold Learning
Recently, manifold learning has been widely exploited in pattern recognition, data analysis, and machine learning. This paper presents a novel framework, called Riemannian manifold learning (RML), based on the assumption that the input high-dimensional ...
Nonlinear Discriminant Analysis on Embedded Manifold
Traditional manifold learning algorithms, such as ISOMAP, LLE, and Laplacian Eigenmap, mainly focus on uncovering the latent low-dimensional geometry structure of the training samples in an unsupervised manner where useful class information is ignored. ...
Incremental Nonlinear Dimensionality Reduction by Manifold Learning
Understanding the structure of multidimensional patterns, especially in unsupervised cases, is of fundamental importance in data mining, pattern recognition, and machine learning. Several algorithms have been proposed to analyze the structure of high-...
Comments
Information & Contributors
Information
Published In
Sponsors
- TICD: TICD
- SIGDA: ACM Special Interest Group on Design Automation
- IEEE CAS
Publisher
IEEE Press
Publication History
Check for updates
Qualifiers
- Research-article
Conference
- TICD
- SIGDA
Acceptance Rates
Contributors
Other Metrics
Bibliometrics & Citations
Bibliometrics
Article Metrics
- 0Total Citations
- 85Total Downloads
- Downloads (Last 12 months)1
- Downloads (Last 6 weeks)0
Other Metrics
Citations
View Options
Login options
Check if you have access through your login credentials or your institution to get full access on this article.
Sign in