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arxiv: 1312.0803 · v3 · pith:2GNXEPPXnew · submitted 2013-12-03 · 💻 cs.CG

Nonlinear Dimensionality Reduction via Path-Based Isometric Mapping

classification 💻 cs.CG
keywords performancedatasetsdimensionalityembeddinggeodesicisomaplow-dimensionalmemory
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Nonlinear dimensionality reduction methods have demonstrated top-notch performance in many pattern recognition and image classification tasks. Despite their popularity, they suffer from highly expensive time and memory requirements, which render them inapplicable to large-scale datasets. To leverage such cases we propose a new method called "Path-Based Isomap". Similar to Isomap, we exploit geodesic paths to find the low-dimensional embedding. However, instead of preserving pairwise geodesic distances, the low-dimensional embedding is computed via a path-mapping algorithm. Due to the much fewer number of paths compared to number of data points, a significant improvement in time and memory complexity without any decline in performance is achieved. The method demonstrates state-of-the-art performance on well-known synthetic and real-world datasets, as well as in the presence of noise.

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