Date
Publisher
arXiv
The promotion of the national education digitalization strategy has
facilitated the development of teaching quality evaluation towards all-round,
process-oriented, precise, and intelligent directions, inspiring explorations
into new methods and technologies for educational quality assurance. Classroom
teaching evaluation methods dominated by teaching supervision and student
teaching evaluation suffer from issues such as low efficiency, strong
subjectivity, and limited evaluation dimensions. How to further advance
intelligent and objective evaluation remains a topic to be explored. This
paper, based on image recognition technology, speech recognition technology,
and AI large language models, develops a comprehensive evaluation system that
automatically generates evaluation reports and optimization suggestions from
two dimensions: teacher teaching ability and classroom teaching effectiveness.
This study establishes a closed-loop classroom evaluation model that
comprehensively evaluates student and teaching conditions based on
multi-dimensional data throughout the classroom teaching process, and further
analyzes the data to guide teaching improvement. It meets the requirements of
all-round and process-oriented classroom evaluation in the era of digital
education, effectively solves the main problems of manual evaluation methods,
and provides data collection and analysis methods as well as technologies for
relevant research on educational teaching evaluation.
What is the application?
Who is the user?
Who age?
Why use AI?
