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      Deep Learning of Constrained Autoencoders for Enhanced Understanding of Data

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          Abstract

          Unsupervised feature extractors are known to perform an efficient and discriminative representation of data. Insight into the mappings they perform and human ability to understand them, however, remain very limited. This is especially prominent when multilayer deep learning architectures are used. This paper demonstrates how to remove these bottlenecks within the architecture of Nonnegativity Constrained Autoencoder (NCSAE). It is shown that by using both L1 and L2 regularization that induce nonnegativity of weights, most of the weights in the network become constrained to be nonnegative thereby resulting into a more understandable structure with minute deterioration in classification accuracy. Also, this proposed approach extracts features that are more sparse and produces additional output layer sparsification. The method is analyzed for accuracy and feature interpretation on the MNIST data, the NORB normalized uniform object data, and the Reuters text categorization dataset.

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          Most cited references6

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          Extracting and composing robust features with denoising autoencoders

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            A tutorial survey of architectures, algorithms, and applications for deep learning – ERRATUM

            Li Deng (2014)
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              Structural learning with forgetting

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                Author and article information

                Journal
                30 January 2018
                Article
                1802.00003
                098559e2-2883-4fac-a557-88c98a0e8c40

                http://creativecommons.org/publicdomain/zero/1.0/

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                cs.LG

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