Experiments show low mutual information does not reliably correspond to geometric compression via class-wise clustering in CEB and dropout networks; the negative nonlinear link can reverse with training changes, suggesting generalization confounds the connection.
IEEE Transactions on Information Forensics and Security18, 2060–2075 (2023)
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Geometric and Information Compression of Representations in Deep Learning
Experiments show low mutual information does not reliably correspond to geometric compression via class-wise clustering in CEB and dropout networks; the negative nonlinear link can reverse with training changes, suggesting generalization confounds the connection.