Correlation Analysis of Higher Education Music Teaching Quality and Students' Artistic Literacy-Based on Regression Analysis Model

被引:0
|
作者
Lin Y. [1 ]
机构
[1] Normal College, Jimei University, Fujian, Xiamen
关键词
Factor analysis; Multiple regression model; Pearson correlation method; Rootedness theory; Students' artistic literacy;
D O I
10.2478/amns-2024-1475
中图分类号
学科分类号
摘要
Music core literacy encompasses the essential skills students must acquire to form accurate concepts through music course learning. The enhancement of students' artistic literacy within music education has emerged as a focal area of research. This study targets music majors at colleges and universities in H city, employing a questionnaire designed from dual perspectives: The quality of music teaching and the level of students' artistic literacy. We applied open coding to the collected data, grounded in rooting theory, to formulate relevant research hypotheses. Subsequently, we assessed the reliability and validity of the questionnaire through factor analysis and conducted a preliminary analysis of the correlations using the Pearson correlation method. Furthermore, we developed a multiple regression model, positioning students' artistic literacy as the dependent variable and music teaching quality as the independent variable, to explore and verify the interrelationships and hypotheses. The findings indicate that the equation can predict students' artistic literacy: 0.882 + 0.255 × teaching ideology + 0.112 × teaching process + 0.176 × teaching ability + 0.225 × teaching effect. The results confirm that the quality of music teaching in colleges and universities significantly influences students' artistic literacy levels. This research provides valuable insights for higher education institutions aiming to innovate music teaching methodologies and enhance the holistic literacy of their students. © 2024 Yushi Lin, published by Sciendo.
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