WinDOM: Self-Family Distillation for Small-Model GUI Grounding
Abstract
Small (2B) GUI-grounding agents are attractive for on-device deployment, accessibility tooling, and low-cost iteration, but at this scale they face two open recipe questions: how to obtain bounding-box training data without expensive human annotation, and how to combine supervised fine-tuning with reinforcement learning. We address both, with the explicit goal of pushing small-model performance rather than scaling up. WinDOM is a 54,425-record grounding corpus harvested by driving an open-source Windows 11 web reimplementation under headless Playwright, with bounding boxes read directly off the DOM and no OCR or human annotation. Self-Family Distillation (SFD) is a single rejection-sampling cold-start parameterised only by the teacher choice: either an EMA of the student (no external model) or a frozen larger same-family teacher. We then treat the saturation depth of the SFD cold-start as an explicit GRPO hyperparameter. On a Qwen3.5-2B student, the under-saturated cold-start is a better GRPO initialiser than the converged one: SFD-4B with Early-init RL gains +5.4 OOD-mean (+3.5 ScreenSpot-Pro, +7.0 OSWorld-G, +5.8 ScreenSpot-V2) over the base. The same-size EMA mode lands within roughly one OOD-mean point of the cross-size 4B variant (65.2 vs 66.3) without an external teacher.
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