Chong Luo’s scientific contributions

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Figure 1. Data mining process diagram
Figure 2. Initial clustering center process based on high-density clustering of K-means algorithm
Figure 7. Line diagram of exam grade and student number
The students' mean of study behavior
Different categories of student study behavior LSD test in study effect Sig.

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Analysis of Literature Education Strategies and Learning Behaviors in the Age of Big Data
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July 2024

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Applied Mathematics and Nonlinear Sciences

Chong Luo

In the contemporary era of big data, the educational landscape is undergoing significant transformations. Literature education, as a vital component, faces both emerging opportunities and challenges. This study develops a framework for analyzing learning behaviors specific to literature education. It employs both an enhanced K-means clustering algorithm and a refined Apriori algorithm for mining data on student learning behaviors. Through cluster analysis and the investigation of association rules, this research explores the interconnections between students’ learning behaviors and their literary education. The findings categorize students into four distinct groups based on their learning behaviors. Students in Category 1 are identified as the most proficient learners, consistently achieving test scores above 85. Conversely, Category 2 students display the least motivation and effectiveness, with their examination scores not exceeding 70. Students in Categories 3 and 4 exhibit comparable levels of performance. Crucially, the analysis reveals that the most significant predictors of students’ literary achievement are their regular and examination scores, with correlation coefficients of 0.627 and 0.653, respectively. This segmentation and analysis of student behaviors facilitate the early detection of atypical learning patterns by educational practitioners, enabling timely intervention strategies to enhance academic outcomes.

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