Date
Publisher
arXiv
This study introduces a novel method that employs tag annotation coupled with
the ChatGPT language model to analyze student learning behaviors and generate
personalized feedback. Central to this approach is the conversion of complex
student data into an extensive set of tags, which are then decoded through
tailored prompts to deliver constructive feedback that encourages rather than
discourages students. This methodology focuses on accurately feeding student
data into large language models and crafting prompts that enhance the
constructive nature of feedback. The effectiveness of this approach was
validated through surveys conducted with over 20 mathematics teachers, who
confirmed the reliability of the generated reports. This method can be
seamlessly integrated into intelligent adaptive learning systems or provided as
a tool to significantly reduce the workload of teachers, providing accurate and
timely feedback to students. By transforming raw educational data into
interpretable tags, this method supports the provision of efficient and timely
personalized learning feedback that offers constructive suggestions tailored to
individual learner needs.
What is the application?
Who age?
Why use AI?