Contrastive Dual Gating: Learning Sparse Features With Contrastive Learning

Jian Meng, Li Yang, Jinwoo Shin, Deliang Fan, J.-s. Seo
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引用次数: 3

Abstract

Contrastive learning (or its variants) has recently become a promising direction in the self-supervised learning domain, achieving similar performance as supervised learning with minimum fine-tuning. Despite the labeling efficiency, wide and large networks are required to achieve high accuracy, which incurs a high amount of computation and hinders the pragmatic merit of self-supervised learning. To effectively reduce the computation of insignificant features or channels, recent dynamic pruning algorithms for supervised learning employed auxiliary salience predictors. However, we found that such salience predictors cannot be easily trained when they are naïvely applied to contrastive learning from scratch. To address this issue, we propose contrastive dual gating (CDG), a novel dynamic pruning algorithm that skips the uninformative features during contrastive learning without hurting the trainability of the networks. We demonstrate the superiority of CDG with ResNet models for CIFAR-10, CIFAR-100, and ImageNet-100 datasets. Compared to our implementations of state-of-the-art dynamic pruning algorithms for self-supervised learning, CDG achieves up to 15% accuracy improvement for CIFAR-10 dataset with higher computation reduction.
对比双门控:用对比学习学习稀疏特征
对比学习(或其变体)最近成为自监督学习领域的一个有前途的方向,以最小的微调实现与监督学习相似的性能。尽管标注效率高,但要达到高准确率需要广泛和庞大的网络,这导致了大量的计算,阻碍了自监督学习的实用价值。为了有效地减少不重要特征或通道的计算,最近用于监督学习的动态修剪算法使用了辅助显著性预测器。然而,我们发现,当这些显著性预测因子naïvely应用于从头开始的对比学习时,它们不容易训练。为了解决这个问题,我们提出了对比双门(CDG),这是一种新的动态修剪算法,在对比学习过程中跳过非信息特征,而不会损害网络的可训练性。我们用ResNet模型对CIFAR-10、CIFAR-100和ImageNet-100数据集证明了CDG的优越性。与我们在自监督学习中实现的最先进的动态修剪算法相比,CDG在CIFAR-10数据集上实现了高达15%的准确率提高,并且减少了更高的计算量。
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