Selecting Landmark Points for Sparse Manifold Learning

Silva, Jorge, Marques, Jorge, Lemos, João

Neural Information Processing Systems 

There has been a surge of interest in learning nonlinear manifold models to approximate high-dimensional data. Both for computational complexity reasonsand for generalization capability, sparsity is a desired feature in such models. This usually means dimensionality reduction, which naturally implies estimating the intrinsic dimension, but it can also mean selecting a subset of the data to use as landmarks, which is especially important becausemany existing algorithms have quadratic complexity in the number of observations.

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