Title :
Dimensionality Reduction by Unsupervised K-Nearest Neighbor Regression
Author_Institution :
Dept. fur Inf., Carl von Ossietzky Univ. Oldenburg, Oldenburg, Germany
Abstract :
In many scientific disciplines structures in high-dimensional data have to be found, e.g., in stellar spectra, in genome data, or in face recognition tasks. In this work we present a novel approach to non-linear dimensionality reduction. It is based on fitting K-nearest neighbor regression to the unsupervised regression framework for learning of low-dimensional manifolds. Similar to related approaches that are mostly based on kernel methods, unsupervised K-nearest neighbor (UNN) regression optimizes latent variables w.r.t. the data space reconstruction error employing the K-nearest neighbor heuristic. The problem of optimizing latent neighborhoods is difficult to solve, but the UNN formulation allows the design of efficient strategies that iteratively embed latent points to fixed neighborhood topologies. UNN is well appropriate for sorting of high-dimensional data. The iterative variants are analyzed experimentally.
Keywords :
data reduction; learning (artificial intelligence); regression analysis; K-nearest neighbor regression; data space reconstruction; high-dimensional data; kernel method; learning; low-dimensional manifold; nonlinear dimensionality reduction; unsupervised k-nearest neighbor regression; unsupervised regression framework; Image color analysis; Iterative methods; Kernel; Manifolds; Principal component analysis; Testing; Topology; dimensionality reduction; nearest neighbors; unsupervised regression;
Conference_Titel :
Machine Learning and Applications and Workshops (ICMLA), 2011 10th International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
978-1-4577-2134-2
DOI :
10.1109/ICMLA.2011.55