A deep matrix factorization method for learning attribute representations

September 10, 2015 Β· Declared Dead Β· πŸ› IEEE Transactions on Pattern Analysis and Machine Intelligence

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Authors George Trigeorgis, Konstantinos Bousmalis, Stefanos Zafeiriou, Bjoern W. Schuller arXiv ID 1509.03248 Category cs.CV: Computer Vision Cross-listed cs.LG, stat.ML Citations 325 Venue IEEE Transactions on Pattern Analysis and Machine Intelligence Last Checked 3 months ago
Abstract
Semi-Non-negative Matrix Factorization is a technique that learns a low-dimensional representation of a dataset that lends itself to a clustering interpretation. It is possible that the mapping between this new representation and our original data matrix contains rather complex hierarchical information with implicit lower-level hidden attributes, that classical one level clustering methodologies can not interpret. In this work we propose a novel model, Deep Semi-NMF, that is able to learn such hidden representations that allow themselves to an interpretation of clustering according to different, unknown attributes of a given dataset. We also present a semi-supervised version of the algorithm, named Deep WSF, that allows the use of (partial) prior information for each of the known attributes of a dataset, that allows the model to be used on datasets with mixed attribute knowledge. Finally, we show that our models are able to learn low-dimensional representations that are better suited for clustering, but also classification, outperforming Semi-Non-negative Matrix Factorization, but also other state-of-the-art methodologies variants.
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