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arxiv: 1106.0321 · v3 · pith:U6CFTFNHnew · submitted 2011-06-01 · 🧮 math.ST · math.OC· stat.CO· stat.ML· stat.TH

Sparse Non Gaussian Component Analysis by Semidefinite Programming

classification 🧮 math.ST math.OCstat.COstat.MLstat.TH
keywords componentanalysisdatadiscussmethodnon-gaussianprogrammingsemidefinite
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Sparse non-Gaussian component analysis (SNGCA) is an unsupervised method of extracting a linear structure from a high dimensional data based on estimating a low-dimensional non-Gaussian data component. In this paper we discuss a new approach to direct estimation of the projector on the target space based on semidefinite programming which improves the method sensitivity to a broad variety of deviations from normality. We also discuss the procedures which allows to recover the structure when its effective dimension is unknown.

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