2020
DOI: 10.48550/arxiv.2009.11499
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Parsimonious Feature Extraction Methods: Extending Robust Probabilistic Projections with Generalized Skew-t

Abstract: We propose a novel generalisation to the Student-t Probabilistic Principal Component methodology which: (1) accounts for an asymmetric distribution of the observation data; (2) is a framework for grouped and generalised multiple-degree-of-freedom structures, which provides a more flexible approach to modelling groups of marginal tail dependence in the observation data; and (3) separates the tail effect of the error terms and factors. The new feature extraction methods are derived in an incomplete data setting … Show more

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