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Department of Electrical Engineering and Computer Science
DGIST Intelligence Augmentation Group
2. Conference Papers
Promptiverse: Scalable Generation of Scaffolding Prompts Through Human-AI Hybrid Knowledge Graph Annotation
Lee, Yoonjoo
;
Chung, John Joon Young
;
Kim, Tae Soo
;
Song, Jean Y.
;
Kim, Juho
Department of Electrical Engineering and Computer Science
DGIST Intelligence Augmentation Group
2. Conference Papers
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Title
Promptiverse: Scalable Generation of Scaffolding Prompts Through Human-AI Hybrid Knowledge Graph Annotation
Issued Date
2022-05-03
Citation
Lee, Yoonjoo. (2022-05-03). Promptiverse: Scalable Generation of Scaffolding Prompts Through Human-AI Hybrid Knowledge Graph Annotation. ACM Conference on Human Factors in Computing Systems, 1–18. doi: 10.1145/3491102.3502087
Type
Conference Paper
ISBN
9781450391573
Abstract
Online learners are hugely diverse with varying prior knowledge, but most instructional videos online are created to be one-size-fits-all. Thus, learners may struggle to understand the content by only watching the videos. Providing scaffolding prompts can help learners overcome these struggles through questions and hints that relate different concepts in the videos and elicit meaningful learning. However, serving diverse learners would require a spectrum of scaffolding prompts, which incurs high authoring effort. In this work, we introduce Promptiverse, an approach for generating diverse, multi-turn scaffolding prompts at scale, powered by numerous traversal paths over knowledge graphs. To facilitate the construction of the knowledge graphs, we propose a hybrid human-AI annotation tool, Grannotate. In our study (N=24), participants produced 40 times more on-par quality prompts with higher diversity, through Promptiverse and Grannotate, compared to hand-designed prompts. Promptiverse presents a model for creating diverse and adaptive learning experiences online. © 2022 ACM.
URI
http://hdl.handle.net/20.500.11750/46854
DOI
10.1145/3491102.3502087
Publisher
Association for Computing Machinery
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