×
CMLM-CSE: Based on Conditional MLM Contrastive Learning for Sentence Embeddings

Authors

ZHANG Wei1,2 and CHEN Xu1, 1Hangzhou Yizhi Intelligent Technology Co., Ltd., China, 2Zhejiang University, China

Abstract

Traditional comparative learning sentence embedding directly uses the encoder to extract sentence features, and then passes in the comparative loss function for learning. However, this method pays too much attention to the sentence body and ignores the influence of some words in the sentence on the sentence semantics. To this end, we propose CMLM-CSE, an unsupervised contrastive learning framework based on conditional MLM. On the basis of traditional contrastive learning, an additional auxiliary network is added to integrate sentence embedding to perform MLM tasks, forcing sentence embedding to learn more masked word information. Finally, when Bertbase was used as the pretraining language model, we exceeded SimCSE by 0.55 percentage points on average in textual similarity tasks, and when Robertabase was used as the pretraining language model, we exceeded SimCSE by 0.3 percentage points on average in textual similarity tasks.

Keywords

Comparative learning, Conditional MLM, Sentence embedding, Auxiliary network, SimCSE