当代音乐学科的发展与大学音乐教学改革

Binbin Zhao, Rim Razzouk
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引用次数: 0

摘要

为了促进当代音乐的发展和音乐改革,本文设计了一种改进的协同过滤(CF)算法,以解决传统推荐算法中矩阵稀疏的问题。对数据矩阵进行降维处理,寻找最近邻,从而实现高校音乐教学资源的个性化推荐。测试结果表明,与传统的 CF 算法相比,所提出的教学资源推荐算法的准确率提高了 22.56%。改进后的CF算法能提供更准确的预测,且改进算法的推荐效果优于原算法,能有效避免CF算法面临的稀疏矩阵问题,为当代音乐学科的发展和音乐学科的改革提供技术支持。
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The Growth of Contemporary Music Subject and the Reform of Music Teaching in Universities
In order to promote the growth of contemporary music and the reform of music, this article designs an improved collaborative filtering (CF) algorithm to solve the problem of sparse matrix in traditional recommendation algorithms. The data matrix is dimensionally reduced to find the nearest neighbor, so as to realize personalized recommendation of music teaching resources in colleges and universities. The test results show that the accuracy of the proposed teaching resource recommendation algorithm is improved by 22.56% compared with the traditional CF algorithm. The improved CF algorithm can provide more accurate prediction, and the recommendation effect of the improved algorithm is better than the original algorithm, which can effectively avoid the sparse matrix problem faced by the CF algorithm, and provide technical support for the development of contemporary music discipline and the reform of music discipline.
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CiteScore
2.40
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0.00%
发文量
68
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