Skip to search formSkip to main contentSkip to account menu

Nonlinear dimensionality reduction

Known as: Non-linear dimensionality reduction, Locally linear embeddings, Locally linear embedding 
High-dimensional data, meaning data that requires more than two or three dimensions to represent, can be difficult to interpret. One approach to… 
Wikipedia (opens in a new tab)

Papers overview

Semantic Scholar uses AI to extract papers important to this topic.
Highly Cited
2009
Highly Cited
2009
Spectral methods have recently emerged as a powerful tool for dimensionality reduction and manifold learning. These methods use… 
2008
2008
Head pose estimation has been an integral problem in the study of face recognition systems and human-computer interfaces, as part… 
2007
2007
Abstract : Geometric harmonics provides a framework for taking data in high-dimensional measurement spaces and embedding them in… 
Highly Cited
2006
Highly Cited
2006
Multi-camera tracking systems often must maintain consistent identity labels of the targets across views to recover 3D… 
2005
2005
In a visualization task, every nonlinear projection method needs to make a compromise between trustworthiness and continuity. In… 
Highly Cited
2002
Highly Cited
2002
An algorithm for manifold learning is presented. Given only samples of a finite-dimensional differentiable manifold and no a…