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Optimizing Retrieval Components for a Shared Backbone via Component-Wise Multi-Stage Training

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Recent advances in embedding-based retrieval have enabled dense retrievers to serve as core infrastructure in many industrial systems, where a single retrieval backbone is often shared across multiple downstream applications. In such settings, retrieval quality directly constrains system performance and extensibility, while coupling model selection, deployment, and rollback decisions across applications. In this paper, we present empirical findings and a system-level solution for optimizing retrieval components deployed as a shared backbone in production legal retrieval systems. We adopt a multi-stage optimization framework for dense retrievers and rerankers, and show that different retrieval components exhibit stage-dependent trade-offs. These observations motivate a component-wise, mixed-stage configuration rather than relying on a single uniformly optimal checkpoint. The resulting backbone is validated through end-to-end evaluation and deployed as a shared retrieval service supporting multiple industrial applications.

Yunhan Li, Mingjie Xie, Zihan Gong, Zeyang Shi, Gengshen Wu, Min Yang• 2026

Related benchmarks

TaskDatasetResultRank
Legal RetrievalCSAID
Recall@2065.3
6
Legal RetrievalSTARD
Recall@200.852
6
RerankingCSAID
MRR91.8
6
RerankingSTARD
MRR0.732
6
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