Music Data Analysis: A State-of-the-art Survey
It summarizes existing research for data scientists and practitioners in music analysis, but is incremental as it only reviews prior work.
This paper provides a survey of current state-of-the-art approaches in music data analysis, covering methods like machine learning and social network analysis, but does not present new results or concrete numbers.
Music accounts for a significant chunk of interest among various online activities. This is reflected by wide array of alternatives offered in music related web/mobile apps, information portals, featuring millions of artists, songs and events attracting user activity at similar scale. Availability of large scale structured and unstructured data has attracted similar level of attention by data science community. This paper attempts to offer current state-of-the-art in music related analysis. Various approaches involving machine learning, information theory, social network analysis, semantic web and linked open data are represented in the form of taxonomy along with data sources and use cases addressed by the research community.