Mind the Gap: Understanding the Modality Gap in Multi-modal Contrastive Representation Learning
–Neural Information Processing Systems
Specifically, we show that different data modalities (e.g. Our systematic analysis demonstrates that this gap is caused by a combination of model initialization and contrastive learning optimization. In model initialization, we show empirically and theoretically that the representation of a common deep neural network is restricted to a narrow cone. As a consequence, in a multi-modal model with two encoders, the representations of the two modalities are clearly apart when the model is initialized. During optimization, contrastive learning keeps the different modalities separate by a certain distance, which is influenced by the temperature parameter in the loss function.
Neural Information Processing Systems
Oct-11-2024, 13:34:37 GMT
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