Out-of-Sample Extensions for LLE, Isomap, MDS, Eigenmaps, and Spectral Clustering
Computer Research Institute of Montréal · Université de Montréal
Abstract
Several unsupervised learning algorithms based on an eigendecomposition provide either an embedding or a clustering only for given training points, with no straightforward extension for out-of-sample examples short of recomputing eigenvectors. This paper provides a unified framework for extending Local Linear Embedding (LLE), Isomap, Laplacian Eigenmaps, Multi-Dimensional Scaling (for dimensionality reduction) as well as for Spectral Clustering. This framework is based on seeing these algorithms as learning eigenfunctions of a data-dependent kernel. Numerical experiments show that the generalizations performed have a level of error comparable to the variability of the embedding algorithms due to the choice of…
Citation impact
- FWCI
- 21.55
- Percentile
- 100%
- References
- 17
Authors
6- YBYoshua BengioCorresponding
Computer Research Institute of Montréal, Université de Montréal
- JPJean-françcois Paiement
Computer Research Institute of Montréal, Université de Montréal
- PVPascal Vincent
Computer Research Institute of Montréal, Université de Montréal
- ODOlivier Delalleau
Computer Research Institute of Montréal, Université de Montréal
- NLNicolas Le Roux
Computer Research Institute of Montréal, Université de Montréal
Topics & keywords
- Isomap
- Nonlinear dimensionality reduction
- Spectral clustering
- Cluster analysis
- Dimensionality reduction
- Artificial intelligence
- Pattern recognition (psychology)
- Embedding