An Automated Multi-Modal Evaluation Framework for Mobile Intelligent Assistants
An Automated Multi-Modal Evaluation Framework for Mobile Intelligent Assistants
With the rapid development of mobile intelligent assistant technologies, multi-modal AI assistants have become essential interfaces for daily user interactions. However, current evaluation methods face challenges including high manual costs, inconsistent standards, and subjective bias. This paper proposes an automated multi-modal evaluation framework based on large language models and multi-agent collaboration. The framework employs a three-tier agent architecture consisting of interaction evaluation agents, semantic verification agents, and experience decision agents. Through supervised fine-tuning on the Qwen3-8B model, we achieve a significant evaluation matching accuracy with human experts. Experimental results on eight major intelligent agents demonstrate the framework's effectiveness in predicting users' satisfaction and identifying generation defects.
Meiping Wang、Jian Zhong、Rongduo Han、Liming Kang、Zhengkun Shi、Xiao Liang、Xing Lin、Nan Gao、Haining Zhang
自动化基础理论计算技术、计算机技术
Meiping Wang,Jian Zhong,Rongduo Han,Liming Kang,Zhengkun Shi,Xiao Liang,Xing Lin,Nan Gao,Haining Zhang.An Automated Multi-Modal Evaluation Framework for Mobile Intelligent Assistants[EB/OL].(2025-08-13)[2025-08-24].https://arxiv.org/abs/2508.09507.点此复制
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