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Unsupervised 2D Dimensionality Reduction with Adaptive Structure Learning
2017
Neural Computation
In recent years, unsupervised two-dimensional (2D) dimensionality reduction methods for unlabeled large-scale data have made progress. However, performance of these degrades when the learning of similarity matrix is at the beginning of the dimensionality reduction process. A similarity matrix is used to reveal the underlying geometry structure of data in unsupervised dimensionality reduction methods. Because of noise data, it is difficult to learn the optimal similarity matrix. In this letter,
doi:10.1162/neco_a_00950
pmid:28333584
fatcat:mkj7pbuseza77b2qxdd7te7qqq