2021
DOI: 10.48550/arxiv.2108.06622
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A Sparse Coding Interpretation of Neural Networks and Theoretical Implications

Joshua Bowren

Abstract: Neural networks, specifically deep convolutional neural networks, have achieved unprecedented performance in various computer vision tasks, but the rationale for the computations and structures of successful neural networks is not fully understood. Theories abound for the aptitude of convolutional neural networks for image classification, but less is understood about why such models would be capable of complex visual tasks such as inference and anomaly identification. Here, we propose a sparse coding interpret… Show more

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