Locally Linear Embedding and its Variants: Tutorial and Survey
Benyamin Ghojogh, Ali Ghodsi, Fakhri Karray, Mark Crowley

TL;DR
This paper provides a comprehensive tutorial and survey of Locally Linear Embedding (LLE) and its numerous variants, covering theoretical foundations, practical algorithms, parameter selection, supervised and semi-supervised extensions, robustness, fusion with other methods, and weighted approaches.
Contribution
It offers an extensive overview of LLE methods, introduces new variants and techniques, and discusses practical considerations for embedding high-dimensional data.
Findings
Detailed explanation of LLE and variants
Introduction of robust and supervised LLE methods
Discussion on parameter selection and fusion techniques
Abstract
This is a tutorial and survey paper for Locally Linear Embedding (LLE) and its variants. The idea of LLE is fitting the local structure of manifold in the embedding space. In this paper, we first cover LLE, kernel LLE, inverse LLE, and feature fusion with LLE. Then, we cover out-of-sample embedding using linear reconstruction, eigenfunctions, and kernel mapping. Incremental LLE is explained for embedding streaming data. Landmark LLE methods using the Nystrom approximation and locally linear landmarks are explained for big data embedding. We introduce the methods for parameter selection of number of neighbors using residual variance, Procrustes statistics, preservation neighborhood error, and local neighborhood selection. Afterwards, Supervised LLE (SLLE), enhanced SLLE, SLLE projection, probabilistic SLLE, supervised guided LLE (using Hilbert-Schmidt independence criterion), and…
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Taxonomy
TopicsFace and Expression Recognition · Gait Recognition and Analysis · Animal Vocal Communication and Behavior
MethodsProcrustes
