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arxiv: 2103.04060 · v1 · pith:HMSGEG3Nnew · submitted 2021-03-06 · 💻 cs.LG · stat.ML

Low-Rank Isomap Algorithm

classification 💻 cs.LG stat.ML
keywords isomapcomplexitylow-rankalgorithmcomputationaldecompositioneigenvaluereduction
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The Isomap is a well-known nonlinear dimensionality reduction method that highly suffers from computational complexity. Its computational complexity mainly arises from two stages; a) embedding a full graph on the data in the ambient space, and b) a complete eigenvalue decomposition. Although the reduction of the computational complexity of the graphing stage has been investigated, yet the eigenvalue decomposition stage remains a bottleneck in the problem. In this paper, we propose the Low-Rank Isomap algorithm by introducing a projection operator on the embedded graph from the ambient space to a low-rank latent space to facilitate applying the partial eigenvalue decomposition. This approach leads to reducing the complexity of Isomap to a linear order while preserving the structural information during the dimensionality reduction process. The superiority of the Low-Rank Isomap algorithm compared to some state-of-art algorithms is experimentally verified on facial image clustering in terms of speed and accuracy.

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