AISEOct 21, 2025

AndroidControl-Curated: Revealing the True Potential of GUI Agents through Benchmark Purification

arXiv:2510.18488v13 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately evaluating on-device virtual assistants for broader adoption, though it is incremental as it refines an existing benchmark.

The research tackled the problem of GUI agents' perceived poor performance by identifying and correcting flaws in the AndroidControl benchmark, resulting in a 15% improvement to 75% success rates on complex tasks and a new model that matches larger models with 200x fewer parameters.

On-device virtual assistants like Siri and Google Assistant are increasingly pivotal, yet their capabilities are hamstrung by a reliance on rigid, developer-dependent APIs. GUI agents offer a powerful, API-independent alternative, but their adoption is hindered by the perception of poor performance, as even the best models (e.g. Qwen3-VL-235B) scores are capped at around 60% on benchmarks like AndroidControl, far from viability for real-world use. Our research reveals that issue lies not only with the models but with the benchmarks themselves. We identified notable shortcomings in AndroidControl, including ambiguities and factual errors, which systematically underrates agent capabilities. To address this critical oversight, we enhanced AndroidControl into AndroidControl-Curated, a refined version of the benchmark improved through a rigorous purification pipeline. On this enhanced benchmark, state-of-the-art models achieve success rates nearing 75% on complex tasks (15% improvement), reflecting that on-device GUI agents are actually closer to practical deployment than previously thought. We introduce our new SOTA model, Magma-R1- 3B, post-trained on just 2.4k curated samples using 60 hours of an H20 GPU (approximately $60). Despite being 200 times smaller in parameters, this model delivers performance comparable to Qwen3- VL-235B. We release both AndroidControl-Curated benchmark and Magma-R1 model to the research community, encouraging adoption of this enhanced benchmark to better reflect model capabilities and accelerate the development of robust, on-device virtual assistants.

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