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Main Authors: Hu, Junxing, Han, Ai, Zhan, Haolan, Wei, Pu, Zhang, Zhiqian, Guo, Yuhang, Lu, Jiawei, Chen, Zhen, Li, Haoran, Zhang, Zicheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.19846
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author Hu, Junxing
Han, Ai
Zhan, Haolan
Wei, Pu
Zhang, Zhiqian
Guo, Yuhang
Lu, Jiawei
Chen, Zhen
Li, Haoran
Zhang, Zicheng
author_facet Hu, Junxing
Han, Ai
Zhan, Haolan
Wei, Pu
Zhang, Zhiqian
Guo, Yuhang
Lu, Jiawei
Chen, Zhen
Li, Haoran
Zhang, Zicheng
contents Hierarchical multi-agent systems based on large language models (LLMs) have become a common paradigm for building AI assistants in vertical domains such as e-commerce, where a master agent coordinates multiple specialized sub-agents. Despite their practical importance, realistic benchmarks for training and evaluating such systems remain scarce, and joint optimization across functionally distinct agents is still challenging. To address this gap, we introduce HiMA-Ecom, the first hierarchical multi-agent benchmark tailored for e-commerce scenarios. HiMA-Ecom contains 22.8K instances, including agent-specific supervised fine-tuning samples with memory and system-level input-output pairs for joint multi-agent reinforcement learning. Building upon it, a joint training method named HiMA-R1 is proposed. It presents Variance-Reduction Group Relative Policy Optimization (VR-GRPO), which employs initial trajectory-based Monte Carlo sampling to mitigate the exponential joint action space and selects informative agent groups for efficient updates based on reward variance. Furthermore, an adaptive memory evolution mechanism that repurposes GRPO rewards as cost-free supervisory signals is designed to eliminate repetitive reasoning and accelerate convergence. Experiments on HiMA-Ecom demonstrate that our method, built upon smaller 3B/7B open-source models, achieves performance comparable to that of larger LLMs, such as DeepSeek-R1, and surpasses DeepSeek-V3 by an average of 6\%.
format Preprint
id arxiv_https___arxiv_org_abs_2506_19846
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle HiMA-Ecom: Enabling Joint Training of Hierarchical Multi-Agent E-commerce Assistants
Hu, Junxing
Han, Ai
Zhan, Haolan
Wei, Pu
Zhang, Zhiqian
Guo, Yuhang
Lu, Jiawei
Chen, Zhen
Li, Haoran
Zhang, Zicheng
Artificial Intelligence
Hierarchical multi-agent systems based on large language models (LLMs) have become a common paradigm for building AI assistants in vertical domains such as e-commerce, where a master agent coordinates multiple specialized sub-agents. Despite their practical importance, realistic benchmarks for training and evaluating such systems remain scarce, and joint optimization across functionally distinct agents is still challenging. To address this gap, we introduce HiMA-Ecom, the first hierarchical multi-agent benchmark tailored for e-commerce scenarios. HiMA-Ecom contains 22.8K instances, including agent-specific supervised fine-tuning samples with memory and system-level input-output pairs for joint multi-agent reinforcement learning. Building upon it, a joint training method named HiMA-R1 is proposed. It presents Variance-Reduction Group Relative Policy Optimization (VR-GRPO), which employs initial trajectory-based Monte Carlo sampling to mitigate the exponential joint action space and selects informative agent groups for efficient updates based on reward variance. Furthermore, an adaptive memory evolution mechanism that repurposes GRPO rewards as cost-free supervisory signals is designed to eliminate repetitive reasoning and accelerate convergence. Experiments on HiMA-Ecom demonstrate that our method, built upon smaller 3B/7B open-source models, achieves performance comparable to that of larger LLMs, such as DeepSeek-R1, and surpasses DeepSeek-V3 by an average of 6\%.
title HiMA-Ecom: Enabling Joint Training of Hierarchical Multi-Agent E-commerce Assistants
topic Artificial Intelligence
url https://arxiv.org/abs/2506.19846