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MRSE: An Efficient Multi-modality Retrieval System for Large Scale E-commerce
by
Hou, Qingshan
, Zhang, Jingchang
, Zhang, Haoxiang
, Wang, Annan
, Chen, Chaofeng
, Lin, Weisi
, Jiang, Hao
in
Electronic commerce
/ Queries
/ Retrieval
2024
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MRSE: An Efficient Multi-modality Retrieval System for Large Scale E-commerce
by
Hou, Qingshan
, Zhang, Jingchang
, Zhang, Haoxiang
, Wang, Annan
, Chen, Chaofeng
, Lin, Weisi
, Jiang, Hao
in
Electronic commerce
/ Queries
/ Retrieval
2024
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MRSE: An Efficient Multi-modality Retrieval System for Large Scale E-commerce
Paper
MRSE: An Efficient Multi-modality Retrieval System for Large Scale E-commerce
2024
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Overview
Providing high-quality item recall for text queries is crucial in large-scale e-commerce search systems. Current Embedding-based Retrieval Systems (ERS) embed queries and items into a shared low-dimensional space, but uni-modality ERS rely too heavily on textual features, making them unreliable in complex contexts. While multi-modality ERS incorporate various data sources, they often overlook individual preferences for different modalities, leading to suboptimal results. To address these issues, we propose MRSE, a Multi-modality Retrieval System that integrates text, item images, and user preferences through lightweight mixture-of-expert (LMoE) modules to better align features across and within modalities. MRSE also builds user profiles at a multi-modality level and introduces a novel hybrid loss function that enhances consistency and robustness using hard negative sampling. Experiments on a large-scale dataset from Shopee and online A/B testing show that MRSE achieves an 18.9% improvement in offline relevance and a 3.7% gain in online core metrics compared to Shopee's state-of-the-art uni-modality system.
Publisher
Cornell University Library, arXiv.org
Subject
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