Children's Mental Models of Generative Visual and Text Based AI Models
Eliza Kosoy, Soojin Jeong, Anoop Sinha, Alison Gopnik, Tanya, Kraljic

TL;DR
This study explores how children aged 5-12 perceive, understand, and interact with generative AI models like ChatGPT and DALL-E, revealing positive attitudes and dynamic mental models even after brief use.
Contribution
It provides the first detailed investigation into children's mental models of generative AI, highlighting their perceptions, queries, and emotional responses before and after interaction.
Findings
Children associate AI positively and find it less scary after use.
Children query AI for imaginative, non-existent content more with visual models.
Children's mental models are dynamic and influenced by interaction.
Abstract
In this work we investigate how children ages 5-12 perceive, understand, and use generative AI models such as a text-based LLMs ChatGPT and a visual-based model DALL-E. Generative AI is newly being used widely since chatGPT. Children are also building mental models of generative AI. Those haven't been studied before and it is also the case that the children's models are dynamic as they use the tools, even with just very short usage. Upon surveying and experimentally observing over 40 children ages 5-12, we found that children generally have a very positive outlook towards AI and are excited about the ways AI may benefit and aid them in their everyday lives. In a forced choice, children robustly associated AI with positive adjectives versus negative ones. We also categorize what children are querying AI models for and find that children search for more imaginative things that don't exist…
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Taxonomy
TopicsRobotics and Automated Systems · Topic Modeling · Child and Animal Learning Development
