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Main Authors: Gan, Guo, Ding, Yuxuan, Chen, Cong, Ren, Yuwei, Huang, Yin, Zhou, Hong
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.07277
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author Gan, Guo
Ding, Yuxuan
Chen, Cong
Ren, Yuwei
Huang, Yin
Zhou, Hong
author_facet Gan, Guo
Ding, Yuxuan
Chen, Cong
Ren, Yuwei
Huang, Yin
Zhou, Hong
contents Online reinforcement learning (RL) serves as an effective method for enhancing the capabilities of Android agents. However, guiding agents to learn through online interaction is prohibitively expensive due to the high latency of emulators and the sample inefficiency of existing RL algorithms. We identify a fundamental limitation in current approaches: the Single State Single Action paradigm, which updates the policy with one-to-one state-action pairs from online one-way rollouts without fully exploring each costly emulator state. In this paper, we propose Android Coach, a novel framework that shifts the training paradigm to Single State Multiple Actions, allowing the agent to sample and utilize multiple actions for a single online state. We enable this without additional emulator overhead by learning a critic that estimates action values. To ensure the critic serves as a reliable coach, we integrate a process reward model and introduce a group-wise advantage estimator based on the averaged critic outputs. Extensive experiments demonstrate the effectiveness and efficiency of Android Coach: it achieves 7.5% and 8.3% success rate improvements on AndroidLab and AndroidWorld over UI-TARS-1.5-7B, and attains 1.4x higher training efficiency than Single State Single Action methods PPO and GRPO at matched success rates.
format Preprint
id arxiv_https___arxiv_org_abs_2604_07277
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Android Coach: Improve Online Agentic Training Efficiency with Single State Multiple Actions
Gan, Guo
Ding, Yuxuan
Chen, Cong
Ren, Yuwei
Huang, Yin
Zhou, Hong
Machine Learning
Artificial Intelligence
Online reinforcement learning (RL) serves as an effective method for enhancing the capabilities of Android agents. However, guiding agents to learn through online interaction is prohibitively expensive due to the high latency of emulators and the sample inefficiency of existing RL algorithms. We identify a fundamental limitation in current approaches: the Single State Single Action paradigm, which updates the policy with one-to-one state-action pairs from online one-way rollouts without fully exploring each costly emulator state. In this paper, we propose Android Coach, a novel framework that shifts the training paradigm to Single State Multiple Actions, allowing the agent to sample and utilize multiple actions for a single online state. We enable this without additional emulator overhead by learning a critic that estimates action values. To ensure the critic serves as a reliable coach, we integrate a process reward model and introduce a group-wise advantage estimator based on the averaged critic outputs. Extensive experiments demonstrate the effectiveness and efficiency of Android Coach: it achieves 7.5% and 8.3% success rate improvements on AndroidLab and AndroidWorld over UI-TARS-1.5-7B, and attains 1.4x higher training efficiency than Single State Single Action methods PPO and GRPO at matched success rates.
title Android Coach: Improve Online Agentic Training Efficiency with Single State Multiple Actions
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2604.07277