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arxiv: 0904.0430 · v2 · submitted 2009-04-02 · 🧮 math.ST · stat.TH

Sparse NonGaussian Component Analysis

classification 🧮 math.ST stat.TH
keywords analysiscomponentngcanon-gaussianmethodproceduresparseadaptive
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Non-gaussian component analysis (NGCA) introduced in offered a method for high dimensional data analysis allowing for identifying a low-dimensional non-Gaussian component of the whole distribution in an iterative and structure adaptive way. An important step of the NGCA procedure is identification of the non-Gaussian subspace using Principle Component Analysis (PCA) method. This article proposes a new approach to NGCA called sparse NGCA which replaces the PCA-based procedure with a new the algorithm we refer to as convex projection.

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