AI Agents

ANCHOR: Branch-Point Data Generation for GUI Agents

JJinbiao WeiYYilun ZhaoKKangqi NiAArman Cohan
Published
February 6, 2026
Authors
4

Abstract

End-to-end GUI agents for real desktop environments require large amounts of high-quality interaction data, yet collecting human demonstrations is expensive and existing synthetic pipelines often suffer from limited task diversity or noisy, goal-drifting trajectories. We present a trajectory expansion framework Anchor that bootstraps scalable desktop supervision from a small set of verified seed demonstrations. Starting from each seed, we identify branch points that correspond to meaningful state changes and propose new, state-grounded task variants conditioned on the current GUI context. An executing agent then follows the proposed instructions to generate new trajectories, while a verifier enforces task completion via state-aware checks and trajectory-level consistency. To improve supervision quality, we further apply task-conditioned step-level filtering to remove ungrounded actions and denoise post-branch segments to maintain coherent intent. Experiments on standard desktop benchmarks, OSWorld and WindowsAgentArena, show that models fine-tuned on our expanded corpus achieve consistent improvements over zero-shot agents and representative synthesis baselines, and generalize across applications and operating systems.

Keywords

trajectory expansionGUI agentsdesktop environmentsseed demonstrationsbranch pointsstate-grounded task variantstrajectory generationverifiertask completionstep-level filteringdenoising

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ANCHOR: Branch-Point Data Generation for GUI Agents | Paperchime