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Principal whitened gradient for information geometry

โœ Scribed by Zhirong Yang; Jorma Laaksonen


Book ID
103853902
Publisher
Elsevier Science
Year
2008
Tongue
English
Weight
929 KB
Volume
21
Category
Article
ISSN
0893-6080

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โœฆ Synopsis


We propose two strategies to improve the optimization in information geometry. First, a local Euclidean embedding is identified by whitening the tangent space, which leads to an additive parameter update sequence that approximates the geodesic flow to the optimal density model. Second, removal of the minor components of gradients enhances the estimation of the Fisher information matrix and reduces the computational cost. We also prove that dimensionality reduction is necessary for learning multidimensional linear transformations. The optimization based on the principal whitened gradients demonstrates faster and more robust convergence in simulations on unsupervised learning with synthetic data and on discriminant analysis of breast cancer data.


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