计算机科学
语法
粒度
出声思维法
编码(集合论)
自然语言
程序设计语言
数学教育
人机交互
多媒体
万维网
人工智能
心理学
集合(抽象数据类型)
可用性
作者
Ruiwei Xiao,Xinying Hou,John Stamper
标识
DOI:10.1145/3613905.3650937
摘要
Recent studies have integrated large language models (LLMs) into diverse educational contexts, including providing adaptive programming hints, a type of feedback focuses on helping students move forward during problem-solving. However, most existing LLM-based hint systems are limited to one single hint type. To investigate whether and how different levels of hints can support students' problem-solving and learning, we conducted a think-aloud study with 12 novices using the LLM Hint Factory, a system providing four levels of hints from general natural language guidance to concrete code assistance, varying in format and granularity. We discovered that high-level natural language hints alone can be helpless or even misleading, especially when addressing next-step or syntax-related help requests. Adding lower-level hints, like code examples with in-line comments, can better support students. The findings open up future work on customizing help responses from content, format, and granularity levels to accurately identify and meet students' learning needs.
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