2019
DOI: 10.48550/arxiv.1907.08952
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An Interpretable Compression and Classification System: Theory and Applications

Abstract: This study proposes a low-complexity interpretable classification system. The proposed system contains three main modules including feature extraction, feature reduction, and classification. All of them are linear. Thanks to the linear property, the extracted and reduced features can be inversed to original data, like a linear transform such as Fourier transform, so that one can quantify and visualize the contribution of individual features towards the original data. Also, the reduced features and reversibilit… Show more

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