eMoCo:增强动量对比的句子表征学习

Shibo Qi, Rize Jin, Joon-Young Paik
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引用次数: 1

摘要

句子表示学习可以将句子转化为固定的格式向量,为后续的信息检索、语义相似度分析等任务提供基础。随着对比学习的普及,句子表征学习也得到了进一步的发展。同时,基于动量的对比学习方法在计算机视觉中也取得了很大的成功。它解决了负样本和批量大小之间的耦合。但在自然语言处理任务中,由于数据增强策略的组合较弱,仅将动量队列中的样本作为负值,而忽略了当前批中生成的样本,因此无法观察到其预期的性能。本文提出eMoCo: enhanced Momentum Contrast来解决上述问题。我们制定了一套文本的数据增强策略,并提出了一种新的双负损失,以充分利用所有负样本。在STS(语义文本相似度)数据集上的大量实验表明,我们的方法优于当前最先进的模型,表明了它在句子表示学习方面的优势。
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eMoCo: Sentence Representation Learning With Enhanced Momentum Contrast
Sentence representation learning can transform sentences into fixed format vectors, and provides foundation for downstream tasks such as information retrieval, semantic similarity analysis, etc. With the popularity of contrastive learning, sentence representation learning has also been further developed. At the same time, contrastive learning method based on momentum has achieved great success in computer vision. It solves the coupling between negative samples and batch size. But its expected performance is not observed in natural language processing tasks because the combination of data augmentation strategies is weak, and it only utilizes the samples in the momentum queue as negatives while ignoring those generated in current batch. In this paper, we propose eMoCo: enhanced Momentum Contrast to solve the above issues. We formulate a set of data augmentation strategies for text, and present a novel Dual-Negative loss to make full use of all negative samples. Extensive experiments on STS (Semantic Text Similarity) datasets show that our method outperforms the current state-of-the-art models, indicating its advantages in sentence representation learning.
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