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1.4.10: Artificial Intelligence in Music Education

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    56724

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    Artificial intelligence, computer software that is designed to mimic human intelligence and interactions, has the potential to reshape music education, enabling students to learn musical instruments and compose music in a fun and easy way (Li and Wang 2023). A recent study examined the effectiveness of teaching music aided by artificial intelligence technology. This study assessed 98 piano students aged 14–17 who were enrolled in two 8-week learning programs in seven music schools in China. One of the classes was based on traditional training while the second class incorporated an artificial intelligence chatbot to enhance several skills such as sight reading and vocal skills.

    The results of the study were analyzed from several perspectives. For the first analysis the authors considered the improvement of the student in a practice exercise that required them to play a scale. The ability for them to complete the exercise was scored and recorded by a computer application. The results showed that the students who used the chatbot had higher mean scores than the students who used traditional training. The results were further divided by the number of times that the students practiced the exercise according to three categories: fewer than 500 times, 500–1,000 times, and more than 1,000 times. The results of this analysis showed that use of the artificial intelligence chatbot increased scores over all three of these categories.

    The authors of the study also considered the overall performance of the students after an entry-level course and four additional courses of increasing level. Throughout the levels the chatbot-assisted classes had higher performance scores that the classes that only used traditional methods. The authors concluded that the artificial intelligence chatbot was not only useful for helping students develop basic skills but can be useful for more advanced students as well.

    A final analysis considered four types of skills that the students were learning: specialty and sight reading, music literature, solfeggio (vocal exercises and ear training) and vocals. In all these skills the chatbot-assisted classes had higher performance scores than the classes that only used traditional methods. The largest difference was in specialty and sight reading, with only modest increases in music literature and vocals. The authors once again concluded that the artificial intelligence chatbot was useful for helping students develop each of the skills.

    This type of research not only shows the potential positive effect that artificial intelligence chatbots can have on music education but also points the researchers in directions where there could be additional improvement. For example, the results indicated that there were only slight gains in music literature and vocals, which could motivate further exploration into developing technologies that aid in these areas of music education.


    This page titled 1.4.10: Artificial Intelligence in Music Education is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by .

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