Abstract

With the rapid development of educational informatization, it has enabled education to enter the era of big data. How to extract effective information from educational big data and realize adaptive personalized learning goals have become the current research hotspot. The traditional static data only analyzes the students' learning degree based on the students' final answer, but ignores the dynamic data in the process of answering questions, such as the modification and the time it answered on the question, which makes it difficult to fully and accurately mine the correlation between the massive data, so it turns from static data mining to dynamic data mining. The paper proposes an optimized mining algorithm for analyzing students' learning degree based on dynamic data. The algorithm first uses the optimized text classification technology to match the question texts to the knowledge points automatically, so as to improves the efficiency and quality. Then, it uses the subjective weighting method combined with the expert experience to generate the learning degree matrix of students on knowledge points based on dynamic data of the students' records. Finally, the DBSCAN clustering algorithm is used to cluster the personalized learning characteristics of students according to the learning degree matrix. The experimental result shows that the algorithm can deal with massive data automatically and effectively, and analyze the students' learning degree on knowledge points comprehensively and accurately, so as to classify students and realize personalized teaching.

Highlights

  • Education data mining [1] is an important branch of contemporary data mining, referring to data mining in the field of education

  • The researcher maps out the knowledge points or concepts of the test questions, and judges the students’ learning degree on the knowledge points through the students’ answers to the test questions [3], [4]

  • Aiming at the above limitations, the algorithm mines the correlation between the knowledge points in the test questions and the dynamic data captured in the records of students answered, so that the scientific, comprehensive and in-depth analysis and research of the student’s learning degree is supported by the data

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Summary

INTRODUCTION

Education data mining [1] is an important branch of contemporary data mining, referring to data mining in the field of education. Aiming at the above limitations, the algorithm mines the correlation between the knowledge points in the test questions and the dynamic data captured in the records of students answered, so that the scientific, comprehensive and in-depth analysis and research of the student’s learning degree is supported by the data. The algorithm solves the limitation of analyzing the traditional static educational data in the past, and through mining and analyzing the dynamic data in the educational data captured, it makes a more comprehensive and accurate analysis of the students’ learning degree on knowledge points. This is a more prominent innovation of the manuscript.

RELATED WORK
THE MINING OF STUDENT’ LEARNING DEGREE
THE CLASSIFICATION OF STUDENT’ LEARNING DEGREE CURVE TRAJECTORY
Word Segmentation and stop word filtering on the test questions
14. Combining matrix QK and matrix SQ
EXPERIMENTS ON TEXT ANALYSIS OF TEST QUESTIONS
THE ANALYSIS OF STUDENTS’ MULTI-FEATURE
THE STUDENT’ LEARNING DEGREE CURVE TRAJECTORY
Findings
CONCLUSION
Full Text
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