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Research on Optimising Personalised Teaching Models in University Piano Courses Using Reinforcement Learning Algorithms

  
27 lut 2025

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Figure 1.

Distribution of the importance of music and art majors among 1000 randomly interviewed parents in A city
Distribution of the importance of music and art majors among 1000 randomly interviewed parents in A city

Figure 2.

Machine learning optimisation model operation logic
Machine learning optimisation model operation logic

Figure 3.

Dynamic optimisation model of student grouping
Dynamic optimisation model of student grouping

Figure 4.

Differential statistics between the experimental group and the control group
Differential statistics between the experimental group and the control group

Figure 5.

Changes in students' course teaching quality before and after optimisation in a semester course
Changes in students' course teaching quality before and after optimisation in a semester course

Figure 6.

Changes in students' satisfaction with course teaching before and after optimisation in a one- semester course
Changes in students' satisfaction with course teaching before and after optimisation in a one- semester course

Figure 7.

Trends in the number of students dissatisfied with the course before and after optimisation in a semester course
Trends in the number of students dissatisfied with the course before and after optimisation in a semester course

Design of the teaching experiment

Control group Experimental group
Students 500 students in c city 500 students in c city
Enviroment c city c city
Expeiment Traditional teaching mode Personalized teaching mode
Variables Reinforcement Learning Algorithm Optimization System

Statistics on the participation of different teachers and students in personalised music teaching

Project Number of teachers Proportion Number of children Proportion
Never used 46 46% 338 68%
Occasionally use 38 38% 107 21%
Frequently use 16 16% 55 11%
Total 100 500

Allocation of weights for student performance in university music teaching classroom

Project Proportion Duration Proportion
Level of interest 20% Never used 10%
Classroom performance 20% Occasionally use 30%
Talent 10% Frequently use 60%
Level of diligence 20%
Classroom feedback situation 30%

Satisfaction with different music classroom models among 1000 A-city university students

Traditional teaching model Interactive teaching mode Reverse teaching model Personalized teaching model
Satisfied 683 736 816 947
Unsatisfied 317 264 184 53
Satisfaction rate 68.3% 73.6% 81.6% 94.7%
Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne