English

M5Product: Self-harmonized Contrastive Learning for E-commercial Multi-modal Pretraining

Computer Vision and Pattern Recognition 2022-04-05 v5 Multimedia

Abstract

Despite the potential of multi-modal pre-training to learn highly discriminative feature representations from complementary data modalities, current progress is being slowed by the lack of large-scale modality-diverse datasets. By leveraging the natural suitability of E-commerce, where different modalities capture complementary semantic information, we contribute a large-scale multi-modal pre-training dataset M5Product. The dataset comprises 5 modalities (image, text, table, video, and audio), covers over 6,000 categories and 5,000 attributes, and is 500 larger than the largest publicly available dataset with a similar number of modalities. Furthermore, M5Product contains incomplete modality pairs and noise while also having a long-tailed distribution, resembling most real-world problems. We further propose Self-harmonized ContrAstive LEarning (SCALE), a novel pretraining framework that integrates the different modalities into a unified model through an adaptive feature fusion mechanism, where the importance of each modality is learned directly from the modality embeddings and impacts the inter-modality contrastive learning and masked tasks within a multi-modal transformer model. We evaluate the current multi-modal pre-training state-of-the-art approaches and benchmark their ability to learn from unlabeled data when faced with the large number of modalities in the M5Product dataset. We conduct extensive experiments on four downstream tasks and demonstrate the superiority of our SCALE model, providing insights into the importance of dataset scale and diversity.

Keywords

Cite

@article{arxiv.2109.04275,
  title  = {M5Product: Self-harmonized Contrastive Learning for E-commercial Multi-modal Pretraining},
  author = {Xiao Dong and Xunlin Zhan and Yangxin Wu and Yunchao Wei and Michael C. Kampffmeyer and Xiaoyong Wei and Minlong Lu and Yaowei Wang and Xiaodan Liang},
  journal= {arXiv preprint arXiv:2109.04275},
  year   = {2022}
}

Comments

CVPR2022

R2 v1 2026-06-24T05:49:35.080Z