Gaussianization

Chen, Scott Saobing, Gopinath, Ramesh A.

Neural Information Processing Systems 

High dimensional data modeling is difficult mainly because the so-called "curse of dimensionality". We propose a technique called "Gaussianization" forhigh dimensional density estimation, which alleviates the curse of dimensionality by exploiting the independence structures in the data. Gaussianization is motivated from recent developments in the statistics literature: projection pursuit, independent component analysis and Gaussian mixturemodels with semi-tied covariances. We propose an iterative Gaussianizationprocedure which converges weakly: at each iteration, thedata is first transformed to the least dependent coordinates and then each coordinate is marginally Gaussianized by univariate techniques.

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