数据挖掘技术在音乐教育信息中的应用

K. Xing
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引用次数: 0

摘要

本文还对各种分类算法模型进行了评价,确定K近邻预测模型在分类和预测学习成绩方面具有最好的性能;根据研究结果,提出在线学习过程中及时进行教学干预的建议,以期为教师了解在线学习者的学习情况、学习者提高在线学习的有效性、管理者优化教育决策提供有益的参考。音乐教育是一个已经存在多年的研究领域。它是一种代代相传的艺术形式,可以说是生活中最重要的东西之一。音乐在我们的生活中扮演着非常重要的角色。它可以带出我们心中最好或最坏的情绪。它也被认为是世界上最受欢迎的娱乐形式之一。在这个时代,科技几乎在生活的各个方面都很重要。随着技术的进步,需要新的方法来使用它,使事情更容易或更有效。技术可以使事情变得更容易或更有效的一个领域是音乐教育。基于内容的方法的主要思想是,一个文档可以通过一组从其内容中直接计算出来的特征来描述。一般来说,基于内容的多媒体数据访问需要特定的方法,这些方法必须针对每个特定的媒体进行定制。然而,基于统计和概率论的核心信息检索(IR)技术可以更广泛地应用于文本之外,因为底层模型可以描述不同媒体、语言和应用领域共享的基本特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Data Mining Technology in Music Education Information
This paper also evaluates various classification algorithm models and determines that the K nearest neighbor prediction model has the best performance in classifying and predicting academic performance; Based on the research results, suggestions for timely teaching interventions in the online learning process are provided, with a view to providing useful references for teachers to understand the learning situation of online learners, learners to improve the effectiveness of online learning, and managers to optimize educational decision-making. Music education is a research field that has existed for many years. It is an art form passed down from generation to generation, which can be said to be one of the most important things in life. Music plays a very important role in our life. It can bring out the best or worst emotions in our hearts. It is also considered one of the most popular forms of entertainment in the world. In this era, technology is very important in almost every aspect of life. With the progress of technology, new methods are needed to use it to make things easier or more efficient. One area where technology can be used to make things easier or more effective is music education. The main idea of the content-based method is that a document can be described by a set of features directly calculated from its content. Generally speaking, content-based multimedia data access requires specific methods, which must be customized for each specific media. However, the core information retrieval (IR) technology based on statistics and probability theory can be more widely used outside the text, because the underlying model can describe the basic features shared by different media, languages and application fields.
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