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Main Authors: Huang, Zeyu, Wang, Juyuan, Chen, Longfeng, Xiao, Boyi, Cai, Leng, Zeng, Yawen, Xu, Jin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.09057
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author Huang, Zeyu
Wang, Juyuan
Chen, Longfeng
Xiao, Boyi
Cai, Leng
Zeng, Yawen
Xu, Jin
author_facet Huang, Zeyu
Wang, Juyuan
Chen, Longfeng
Xiao, Boyi
Cai, Leng
Zeng, Yawen
Xu, Jin
contents Given the significant advances in Large Vision Language Models (LVLMs) in reasoning and visual understanding, mobile agents are rapidly emerging to meet users' automation needs. However, existing evaluation benchmarks are disconnected from the real world and fail to adequately address the diverse and complex requirements of users. From our extensive collection of user questionnaire, we identified five tasks: Multi-App, Vague, Interactive, Single-App, and Unethical Instructions. Around these tasks, we present \textbf{MVISU-Bench}, a bilingual benchmark that includes 404 tasks across 137 mobile applications. Furthermore, we propose Aider, a plug-and-play module that acts as a dynamic prompt prompter to mitigate risks and clarify user intent for mobile agents. Our Aider is easy to integrate into several frameworks and has successfully improved overall success rates by 19.55\% compared to the current state-of-the-art (SOTA) on MVISU-Bench. Specifically, it achieves success rate improvements of 53.52\% and 29.41\% for unethical and interactive instructions, respectively. Through extensive experiments and analysis, we highlight the gap between existing mobile agents and real-world user expectations.
format Preprint
id arxiv_https___arxiv_org_abs_2508_09057
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MVISU-Bench: Benchmarking Mobile Agents for Real-World Tasks by Multi-App, Vague, Interactive, Single-App and Unethical Instructions
Huang, Zeyu
Wang, Juyuan
Chen, Longfeng
Xiao, Boyi
Cai, Leng
Zeng, Yawen
Xu, Jin
Computation and Language
Given the significant advances in Large Vision Language Models (LVLMs) in reasoning and visual understanding, mobile agents are rapidly emerging to meet users' automation needs. However, existing evaluation benchmarks are disconnected from the real world and fail to adequately address the diverse and complex requirements of users. From our extensive collection of user questionnaire, we identified five tasks: Multi-App, Vague, Interactive, Single-App, and Unethical Instructions. Around these tasks, we present \textbf{MVISU-Bench}, a bilingual benchmark that includes 404 tasks across 137 mobile applications. Furthermore, we propose Aider, a plug-and-play module that acts as a dynamic prompt prompter to mitigate risks and clarify user intent for mobile agents. Our Aider is easy to integrate into several frameworks and has successfully improved overall success rates by 19.55\% compared to the current state-of-the-art (SOTA) on MVISU-Bench. Specifically, it achieves success rate improvements of 53.52\% and 29.41\% for unethical and interactive instructions, respectively. Through extensive experiments and analysis, we highlight the gap between existing mobile agents and real-world user expectations.
title MVISU-Bench: Benchmarking Mobile Agents for Real-World Tasks by Multi-App, Vague, Interactive, Single-App and Unethical Instructions
topic Computation and Language
url https://arxiv.org/abs/2508.09057