MLGIB derives variational bounds for multi-label message passing to maximize predictive information while constraining redundant noise from irrelevant labels.
Deep variational information bottleneck
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Self-supervised encoders prefer isotropic Gaussian latent states because the Information Bottleneck, recast as rate-distortion over the predictive manifold, makes these states optimal for target-neutral representations.
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MLGIB: Multi-Label Graph Information Bottleneck for Expressive and Robust Message Passing
MLGIB derives variational bounds for multi-label message passing to maximize predictive information while constraining redundant noise from irrelevant labels.