Efficient Unsupervised Visual Representation Learning with Explicit Cluster Balancing
Self-supervised learning has recently emerged as the preeminent pretraining paradigm across and between modalities, with remarkable results. In the image domain specifically, group (or cluster) discrimination has been one of the most successful methods. However, such frameworks need to guard against...
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Zusammenfassung: | Self-supervised learning has recently emerged as the preeminent pretraining
paradigm across and between modalities, with remarkable results. In the image
domain specifically, group (or cluster) discrimination has been one of the most
successful methods. However, such frameworks need to guard against heavily
imbalanced cluster assignments to prevent collapse to trivial solutions.
Existing works typically solve this by reweighing cluster assignments to
promote balance, or with offline operations (e.g. regular re-clustering) that
prevent collapse. However, the former typically requires large batch sizes,
which leads to increased resource requirements, and the latter introduces
scalability issues with regard to large datasets. In this work, we propose
ExCB, a framework that tackles this problem with a novel cluster balancing
method. ExCB estimates the relative size of the clusters across batches and
balances them by adjusting cluster assignments, proportionately to their
relative size and in an online manner. Thereby, it overcomes previous methods'
dependence on large batch sizes and is fully online, and therefore scalable to
any dataset. We conduct extensive experiments to evaluate our approach and
demonstrate that ExCB: a) achieves state-of-the-art results with significantly
reduced resource requirements compared to previous works, b) is fully online,
and therefore scalable to large datasets, and c) is stable and effective even
with very small batch sizes. |
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DOI: | 10.48550/arxiv.2407.11168 |