Soundtrap usage during COVID-19: A machine-learning approach to assess the effects of the pandemic on online music learning

David H. Knapp, Bryan Powell, G. Smith, John C Coggiola, M. Kelsey
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Abstract

The COVID-19 pandemic prompted a sudden rethinking of how music was taught and learned. Prior to the pandemic, the web-based digital audio workstation Soundtrap emerged as a leading platform for creating music online. The present study examined the growth of Soundtrap’s usage during the COVID-19 pandemic. Using machine-learning methods, we analyzed anonymized user data from Soundtrap’s 1.6 million educational users in the United States to see if the pandemic affected Soundtrap’s education user base and, if so, to what extent. An exploratory data analysis demonstrated a large increase in Soundtrap’s user base beyond five standard deviations beginning in March 2020. A subsequent changepoint analysis identified March 17, 2020, as the day this shift occurred. Finally, we created a SARIMAX model using data prior to March 17 to forecast expected growth. This model was unable to account for user growth after March 17, showing highly anomalous growth rates outside of the model’s confidence interval. We discuss how this shift affects music education practices and what it portends for our field. In addition, we explore the role of machine learning and artificial intelligence as a method for research in the music education field.
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新冠肺炎期间Soundtrap的使用:评估疫情对在线音乐学习影响的机器学习方法
新冠肺炎大流行促使人们突然重新思考如何教授和学习音乐。在疫情之前,基于网络的数字音频工作站Soundtrap已成为在线音乐创作的领先平台。本研究调查了新冠肺炎大流行期间Soundtrap使用量的增长。使用机器学习方法,我们分析了Soundtrap在美国160万教育用户的匿名用户数据,以了解疫情是否影响了Soundtrap的教育用户群,如果影响了,影响程度如何。一项探索性数据分析显示,从2020年3月开始,Soundtrap的用户群大幅增加,超过了五个标准差。随后的变化点分析确定,2020年3月17日是这种转变发生的日子。最后,我们使用3月17日之前的数据创建了一个SARIMAX模型,以预测预期增长。该模型无法解释3月17日之后的用户增长,显示出超出模型置信区间的高度异常增长率。我们讨论了这种转变如何影响音乐教育实践,以及它对我们的领域预示着什么。此外,我们还探讨了机器学习和人工智能作为音乐教育领域研究方法的作用。
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来源期刊
CiteScore
3.00
自引率
37.50%
发文量
37
期刊介绍: Research Studies in Music Education is an internationally peer-reviewed journal that promotes the dissemination and discussion of high quality research in music and music education. The journal encourages the interrogation and development of a range of research methodologies and their application to diverse topics in music education theory and practice. The journal covers a wide range of topics across all areas of music education, and a separate "Perspectives in Music Education Research" section provides a forum for researchers to discuss topics of special interest and to debate key issues in the profession.
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