Understanding the Influence of Genre-Specific Music Using Network Analysis and Machine Learning Algorithms

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Bishal Lamichhane, Aniket Kumar Singh, Sumana Devkota, Uttam Dhakal, Subham Singh, Chandra Dhakal
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引用次数: 0

Abstract

This study analyzes a network of musical influence using machine learning and network analysis techniques. A directed network model is used to represent the influence relations between artists as nodes and edges. Network properties and centrality measures are analyzed to identify influential patterns. In addition, influence within and outside the genre is quantified using in-genre and out-genre weights. Regression analysis is performed to determine the impact of musical attributes on influence. We find that speechiness, acousticness, and valence are the top features of the most influential artists. We also introduce the IRDI, an algorithm that provides an innovative approach to quantify an artist’s influence by capturing the degree of dominance among their followers. This approach underscores influential artists who drive the evolution of music, setting trends and significantly inspiring a new generation of artists. The independent cascade model is further employed to open up the temporal dynamics of influence propagation across the entire musical network, highlighting how initial seeds of influence can contagiously spread through the network. This multidisciplinary approach provides a nuanced understanding of musical influence that refines existing methods and sheds light on influential trends and dynamics.
利用网络分析和机器学习算法了解特定音乐流派的影响
本研究使用机器学习和网络分析技术分析了音乐影响网络。使用有向网络模型将艺术家之间的影响关系表示为节点和边。分析了网络特性和中心性度量,以确定影响模式。此外,使用类型内和类型外权重来量化类型内和类型外的影响。进行回归分析以确定音乐属性对影响的影响。我们发现,最具影响力的艺术家的最主要特征是言语性、声学性和价性。我们还介绍了IRDI,这是一种算法,它提供了一种创新的方法,通过捕捉艺术家在追随者中的主导程度来量化艺术家的影响力。这种方法强调了有影响力的艺术家,他们推动了音乐的发展,引领了潮流,并极大地激励了新一代艺术家。独立级联模型进一步揭示了整个音乐网络中影响传播的时间动态,突出了影响的初始种子如何通过网络传染传播。这种多学科的方法提供了对音乐影响的细致理解,改进了现有的方法,并揭示了有影响力的趋势和动态。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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