Improving User Interface Generation Models from Designer Feedback

要旨

Despite being trained on vast amounts of data, most LLMs are unable to reliably generate well-designed UIs. Designer feedback is essential to improving performance on UI generation; however, we find that existing RLHF methods based on ratings or rankings are not well-aligned with with designers' workflows and ignore the rich rationale used to critique and improve UI designs. In this paper, we investigate several approaches for designers to give feedback to UI generation models, using familiar interactions such as commenting, sketching and direct manipulation. We first perform an evaluation with 21 designers where they gave feedback using these interactions, which resulted in ~1500 design annotations. We then use this data to finetune a series of LLMs to generate higher quality UIs. Finally, we evaluate these models with human judges, and we find that our designer-aligned approaches outperform models trained with traditional ranking feedback and all tested baselines, including GPT-5.

著者
Jason Wu
Apple, Seattle, Washington, United States
Amanda Swearngin
Apple, Seattle, Washington, United States
Arun Krishnavajjala
George Mason University, Fairfax, Virginia, United States
Alan Leung
Apple, Seattle, Washington, United States
Jeffrey Nichols
Apple, Seattle, Washington, United States
Titus Barik
Apple, Seattle, Washington, United States

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Personalization and Human-AI Alignment

P1 - Room 130
7 件の発表
2026-04-14 18:00:00
2026-04-14 19:30:00