Author
Listed:
- Na Chu
- Wanzhi Ma
- Wei Wang
Abstract
Data mining technology is an effective knowledge mining and data relationship induction technology based on massive data, which is widely used in data analysis in many fields. In order to improve the utilization effect of students’ performance and meet the teaching needs of modern education, data mining technology can be applied to the existing performance database to mine the data information and treatment. Data mining technology is used to analyse and process the data stored in the student achievement management system, which provides the basis for improving the teaching quality and optimizing the teaching resources. Based on the analysis of the relevant data of large-scale English test results, this paper finds out the relevant rules that affect college English test results, forms the corresponding performance prediction rules, uses data mining technology to more comprehensively analyse the factors that affect students’ performance, establishes a model, and uses data mining tools to mine and analyse students’ English test data. It is of great practical significance to select the model with high accuracy, further optimize the parameters, make good use of the data, and then take targeted measures to guide the teaching reform, help students make more efficient learning plans, and improve and perfect the existing problems in teaching.
Suggested Citation
Na Chu & Wanzhi Ma & Wei Wang, 2021.
"Distribution of Large-Scale English Test Scores Based on Data Mining,"
Complexity, Hindawi, vol. 2021, pages 1-10, March.
Handle:
RePEc:hin:complx:5531595
DOI: 10.1155/2021/5531595
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