AFMRL: Attribute-Enhanced Fine-Grained Multi-Modal Representation Learning in E-commerce
About
Multimodal representation is crucial for E-commerce tasks such as identical product retrieval. Large representation models (e.g., VLM2Vec) demonstrate strong multimodal understanding capabilities, yet they struggle with fine-grained semantic comprehension, which is essential for distinguishing highly similar items. To address this, we propose Attribute-Enhanced Fine-Grained Multi-Modal Representation Learning (AFMRL), which defines product fine-grained understanding as an attribute generation task. It leverages the generative power of Multimodal Large Language Models (MLLMs) to extract key attributes from product images and text, and enhances representation learning through a two-stage training framework: 1) Attribute-Guided Contrastive Learning (AGCL), where the key attributes generated by the MLLM are used in the image-text contrastive learning training process to identify hard samples and filter out noisy false negatives. 2) Retrieval-aware Attribute Reinforcement (RAR), where the improved retrieval performance of the representation model post-attribute integration serves as a reward signal to enhance MLLM's attribute generation during multimodal fine-tuning. Extensive experiments on large-scale E-commerce datasets demonstrate that our method achieves state-of-the-art performance on multiple downstream retrieval tasks, validating the effectiveness of harnessing generative models to advance fine-grained representation learning.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multimodal Retrieval (image query to multimodal content) | M5Product (test) | Recall@132.8 | 23 | |
| Coarse-grained Product Retrieval | M5Product (test) | mAP@171.3 | 10 | |
| Fine-Grained Instance Retrieval | M5Product (test) | Recall@154.28 | 10 | |
| Text-to-Image Retrieval | M5Product (test) | Recall@138.1 | 10 | |
| Coarse-grained Product Retrieval | EIPM 200,000 products (test) | mAP@169.4 | 7 | |
| Image-to-Text Retrieval | EIPM 200,000 products (test) | Recall@133.2 | 7 | |
| Text-to-Image Retrieval | EIPM 200,000 products (test) | Recall@137.5 | 7 |