Representation Learning via Consistent Assignment of Views over Random Partitions
–Neural Information Processing Systems
CARP learns prototypes in an end-to-end online fashion using gradient descent without additional non-differentiable modules to solve the cluster assignment problem. CARP optimizes a new pretext task based on random partitions of prototypes that regularizes the model and enforces consistency between views' assignments. Additionally, our method improves training stability and prevents collapsed solutions in joint-embedding training. Through an extensive evaluation, we demonstrate that CARP's representations are suitable for learning downstream tasks. We evaluate CARP's representations capabilities in 17 datasets across many standard protocols, including linear evaluation, few-shot classification, k -NN, k -means, image retrieval, and copy detection.
Neural Information Processing Systems
Jan-19-2025, 10:25:35 GMT
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