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Autori principali: Wei, Jinjie, Liu, Jiyao, Liu, Lihao, Hu, Ming, Ning, Junzhi, Li, Mingcheng, Yin, Weijie, He, Junjun, Liang, Xiao, Feng, Chao, Yang, Dingkang
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.17913
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author Wei, Jinjie
Liu, Jiyao
Liu, Lihao
Hu, Ming
Ning, Junzhi
Li, Mingcheng
Yin, Weijie
He, Junjun
Liang, Xiao
Feng, Chao
Yang, Dingkang
author_facet Wei, Jinjie
Liu, Jiyao
Liu, Lihao
Hu, Ming
Ning, Junzhi
Li, Mingcheng
Yin, Weijie
He, Junjun
Liang, Xiao
Feng, Chao
Yang, Dingkang
contents Graphical User Interface (GUI) agents have made significant progress in automating digital tasks through the utilization of computer vision and language models. Nevertheless, existing agent systems encounter notable limitations. Firstly, they predominantly depend on trial and error decision making rather than progressive reasoning, thereby lacking the capability to learn and adapt from interactive encounters. Secondly, these systems are assessed using overly simplistic single step accuracy metrics, which do not adequately reflect the intricate nature of real world GUI interactions. In this paper, we present CogniGUI, a cognitive framework developed to overcome these limitations by enabling adaptive learning for GUI automation resembling human-like behavior. Inspired by Kahneman's Dual Process Theory, our approach combines two main components: (1) an omni parser engine that conducts immediate hierarchical parsing of GUI elements through quick visual semantic analysis to identify actionable components, and (2) a Group based Relative Policy Optimization (GRPO) grounding agent that assesses multiple interaction paths using a unique relative reward system, promoting minimal and efficient operational routes. This dual-system design facilitates iterative ''exploration learning mastery'' cycles, enabling the agent to enhance its strategies over time based on accumulated experience. Moreover, to assess the generalization and adaptability of agent systems, we introduce ScreenSeek, a comprehensive benchmark that includes multi application navigation, dynamic state transitions, and cross interface coherence, which are often overlooked challenges in current benchmarks. Experimental results demonstrate that CogniGUI surpasses state-of-the-art methods in both the current GUI grounding benchmarks and our newly proposed benchmark.
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record_format arxiv
spellingShingle Learning, Reasoning, Refinement: A Framework for Kahneman's Dual-System Intelligence in GUI Agents
Wei, Jinjie
Liu, Jiyao
Liu, Lihao
Hu, Ming
Ning, Junzhi
Li, Mingcheng
Yin, Weijie
He, Junjun
Liang, Xiao
Feng, Chao
Yang, Dingkang
Artificial Intelligence
Graphical User Interface (GUI) agents have made significant progress in automating digital tasks through the utilization of computer vision and language models. Nevertheless, existing agent systems encounter notable limitations. Firstly, they predominantly depend on trial and error decision making rather than progressive reasoning, thereby lacking the capability to learn and adapt from interactive encounters. Secondly, these systems are assessed using overly simplistic single step accuracy metrics, which do not adequately reflect the intricate nature of real world GUI interactions. In this paper, we present CogniGUI, a cognitive framework developed to overcome these limitations by enabling adaptive learning for GUI automation resembling human-like behavior. Inspired by Kahneman's Dual Process Theory, our approach combines two main components: (1) an omni parser engine that conducts immediate hierarchical parsing of GUI elements through quick visual semantic analysis to identify actionable components, and (2) a Group based Relative Policy Optimization (GRPO) grounding agent that assesses multiple interaction paths using a unique relative reward system, promoting minimal and efficient operational routes. This dual-system design facilitates iterative ''exploration learning mastery'' cycles, enabling the agent to enhance its strategies over time based on accumulated experience. Moreover, to assess the generalization and adaptability of agent systems, we introduce ScreenSeek, a comprehensive benchmark that includes multi application navigation, dynamic state transitions, and cross interface coherence, which are often overlooked challenges in current benchmarks. Experimental results demonstrate that CogniGUI surpasses state-of-the-art methods in both the current GUI grounding benchmarks and our newly proposed benchmark.
title Learning, Reasoning, Refinement: A Framework for Kahneman's Dual-System Intelligence in GUI Agents
topic Artificial Intelligence
url https://arxiv.org/abs/2506.17913