When Should Teachers Control AI Generation for Mathematics Visuals?
Zhengxu Li, Junling Wang, April Yi Wang

TL;DR
This study explores when teachers should control AI-generated math visuals, finding that post-generation control enhances perceived correctness and predictability, informing design of educational AI tools.
Contribution
The paper introduces a control-stage framework for AI-assisted visual creation in education and empirically evaluates its impact on teachers' workflows and perceptions.
Findings
Post-generation control received higher ratings on predictability and correctness.
Pre-generation control supports rapid ideation but reduces perceived agency.
Mid-generation control improves structural alignment at the cost of effort.
Abstract
Generative AI has the potential to help teachers rapidly create classroom-ready visual materials, particularly in mathematics where diagrams and visual representations must be pedagogically meaningful and instructionally correct. However, current generative tools primarily support prompting and post-hoc editing, leaving open a key question for correctness-sensitive educational authoring: when in the generation pipeline should teachers exert control? In this paper, we investigate how the timing of human control in AI-assisted generation shapes teachers' visual authoring practices in correctness-sensitive tasks. We introduce a design space of three stages of control: pre-generation control, where users specify intent solely through natural language prompts before generation; mid-generation control, where users inspect and confirm an explicit layout structure before the system completes…
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