Content area
This study explored the use of big-data learning diagnosis systems in higher education English precision teaching. The traditional one-size-fits-all teaching model is inadequate in the globalized context, while big-data technology offers new reform opportunities. The study selected 120 university English majors as samples and collected multi-dimensional data to build a linear regression model. Results show that online learning duration, homework completion rates, and classroom interaction frequency positively impact final grades. Targeted interventions lead to significant improvements in these areas. However, challenges remain in data security, teacher capability, system integration, and data quality. This study confirms the effectiveness of big-data learning diagnosis systems in enhancing precision teaching and provides valuable insights for future educational reforms.
Details
Teaching methods;
Curricula;
Higher education;
Medical diagnosis;
Intervention;
Classroom communication;
Education policy;
Diagnosis;
Teaching;
Educational technology;
Homework;
Learning management systems;
Data quality;
Distance learning;
Teachers;
Colleges & universities;
Big Data;
Data integrity;
Learning;
Multidimensional data;
Mental health;
Educational systems;
Education reform;
Language;
Regression models;
Batch processing;
Feedback;
Classrooms;
Information technology
