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CORR
2016
Springer

Deep Learning of Part-based Representation of Data Using Sparse Autoencoders with Nonnegativity Constraints

8 years 8 months ago
Deep Learning of Part-based Representation of Data Using Sparse Autoencoders with Nonnegativity Constraints
Abstract—We demonstrate a new deep learning autoencoder network, trained by a nonnegativity constraint algorithm (NCAE), that learns features which show part-based representation of data. The learning algorithm is based on constraining negative weights. The performance of the algorithm is assessed based on decomposing data into parts and its prediction performance is tested on three standard image data sets and one text dataset. The results indicate that the nonnegativity constraint forces the autoencoder to learn features that amount to a part-based representation of data, while improving sparsity and reconstruction quality in comparison with the traditional sparse autoencoder and Nonnegative Matrix Factorization. It is also shown that this newly acquired representation improves the prediction performance of a deep neural network.
Ehsan Hosseini-Asl, Jacek M. Zurada, Olfa Nasraoui
Added 31 Mar 2016
Updated 31 Mar 2016
Type Journal
Year 2016
Where CORR
Authors Ehsan Hosseini-Asl, Jacek M. Zurada, Olfa Nasraoui
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