Title :
Learning intrinsic dimension and intrinsic entropy of high-dimensional datasets
Author :
Costa, Jose A. ; Hero, Alfred O.
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of Michigan, Ann Arbor, MI, USA
Abstract :
Populations of measurements of objects such as faces, genes or internet data traces, lie in lower dimensional manifolds of their high dimensional embedding spaces, e.g. face images, gene microarrays, or multivariate time series records. Knowing the intrinsic dimension and relative entropy of these manifolds is important for discovering structure, classifying differences, or performing dimensionality reduction (compression). In this paper we apply a new family of entropic graph methods to the estimation of intrinsic dimension and entropy of datasets supported on synthetic manifolds and of a high dimensional dataset of handwritten digits.
Keywords :
entropy; graph theory; handwritten character recognition; image classification; learning (artificial intelligence); difference classification; dimensionality reduction; entropic graph methods; handwritten digits; high dimensional dataset; high dimensional embedding spaces; high-dimensional datasets; intrinsic dimension learning; intrinsic entropy; lower dimensional manifolds; object measurement population; structure discovery; synthetic manifolds; Abstracts; Entropy; ISO standards; Manifolds;
Conference_Titel :
Signal Processing Conference, 2004 12th European
Conference_Location :
Vienna
Print_ISBN :
978-320-0001-65-7