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Main Authors: Zhai, Zhouwei, Chen, Mengxiang, Xia, Haoyun, Li, Jin, Zhou, Renquan, Yang, Min
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.20567
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author Zhai, Zhouwei
Chen, Mengxiang
Xia, Haoyun
Li, Jin
Zhou, Renquan
Yang, Min
author_facet Zhai, Zhouwei
Chen, Mengxiang
Xia, Haoyun
Li, Jin
Zhou, Renquan
Yang, Min
contents The retrieval-ranking paradigm has long dominated e-commerce search, but its reliance on query-item matching fundamentally misaligns with multi-stage cognitive decision processes of platform users. This misalignment introduces critical limitations: semantic gaps in complex queries, high decision costs due to cross-platform information foraging, and the absence of professional shopping guidance. To address these issues, we propose a Multi-Agent Cognitive Decision Framework (MACDF), which shifts the paradigm from passive retrieval to proactive decision support. Extensive offline evaluations demonstrate MACDF's significant improvements in recommendation accuracy and user satisfaction, particularly for complex queries involving negation, multi-constraint, or reasoning demands. Online A/B testing on JD search platform confirms its practical efficacy. This work highlights the transformative potential of multi-agent cognitive systems in redefining e-commerce search.
format Preprint
id arxiv_https___arxiv_org_abs_2510_20567
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Beyond Retrieval-Ranking: A Multi-Agent Cognitive Decision Framework for E-Commerce Search
Zhai, Zhouwei
Chen, Mengxiang
Xia, Haoyun
Li, Jin
Zhou, Renquan
Yang, Min
Computation and Language
The retrieval-ranking paradigm has long dominated e-commerce search, but its reliance on query-item matching fundamentally misaligns with multi-stage cognitive decision processes of platform users. This misalignment introduces critical limitations: semantic gaps in complex queries, high decision costs due to cross-platform information foraging, and the absence of professional shopping guidance. To address these issues, we propose a Multi-Agent Cognitive Decision Framework (MACDF), which shifts the paradigm from passive retrieval to proactive decision support. Extensive offline evaluations demonstrate MACDF's significant improvements in recommendation accuracy and user satisfaction, particularly for complex queries involving negation, multi-constraint, or reasoning demands. Online A/B testing on JD search platform confirms its practical efficacy. This work highlights the transformative potential of multi-agent cognitive systems in redefining e-commerce search.
title Beyond Retrieval-Ranking: A Multi-Agent Cognitive Decision Framework for E-Commerce Search
topic Computation and Language
url https://arxiv.org/abs/2510.20567