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Physical Sciences and Mathematics Commons

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Deep learning

Central Washington University

2022

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Full-Text Articles in Physical Sciences and Mathematics

Information Bottleneck In Deep Learning - A Semiotic Approach, Bogdan Musat, Razvan Andonie Jan 2022

Information Bottleneck In Deep Learning - A Semiotic Approach, Bogdan Musat, Razvan Andonie

Computer Science Faculty Scholarship

The information bottleneck principle was recently proposed as a theory meant to explain some of the training dynamics of deep neural architectures. Via information plane analysis, patterns start to emerge in this framework, where two phases can be distinguished: fitting and compression. We take a step further and study the behaviour of the spatial entropy characterizing the layers of convolutional neural networks (CNNs), in relation to the information bottleneck theory. We observe pattern formations which resemble the information bottleneck fitting and compression phases. From the perspective of semiotics, also known as the study of signs and sign-using behavior, the saliency …