Abstract The emergence of streaming services, e.g., Spotify, has changed the way people listen to music and the way professional musicians achieve fame and success. Classical music has been the backbone of Western media for a long time, but Spotify has introduced the public to a much wider variety of music, also opening a new venue for professional musicians to gain exposure. In this paper, we use open-source data from Spotify and Musicbrainz databases to construct collaboration-based and genre-based networks. We call genres defined in these databases primary genres. Our goal is to find the correlation between various features of each professional musician, the current stage of their career, and the level of their success in the music field...
The Billboard Hot 100 has been the main record chart for popular music in the American music industr...
This paper uses the data crawled from the AllMusic website to establish a directional network of fol...
In the music market, superstars significantly dominate the market share, while predicting the top hi...
The growing use of predictive analysis can be seen in volatile industries such as the music industry...
We analyze and identify collaboration profiles in success-based music genre networks. Such networks ...
Music has tremendous cultural and commercial significance for people the world over. It is one of th...
Nowadays social media are the main means for conducting discussions and sharing opinions. The huge a...
This dataset is built by using data from Spotify. It provides a daily chart of the 200 most streamed...
Social influence analysis is a very popular research direction. This article analyzes the social net...
MGD: Music Genre Dataset Over recent years, the world has seen a dramatic change in the way people ...
The global music market moves billions of dollars every year, most of which comes from streamingplat...
Radio is a powerful and influential medium with a vast and encompassing audience reaching about 244...
Digital music distribution is increasingly powered by automated mechanisms that continuously capture...
The construction of rankings consists of ordering retrieved results according to certain criteria. R...
Using regression and classification machine learning algorithms, this study explores audio features ...
The Billboard Hot 100 has been the main record chart for popular music in the American music industr...
This paper uses the data crawled from the AllMusic website to establish a directional network of fol...
In the music market, superstars significantly dominate the market share, while predicting the top hi...
The growing use of predictive analysis can be seen in volatile industries such as the music industry...
We analyze and identify collaboration profiles in success-based music genre networks. Such networks ...
Music has tremendous cultural and commercial significance for people the world over. It is one of th...
Nowadays social media are the main means for conducting discussions and sharing opinions. The huge a...
This dataset is built by using data from Spotify. It provides a daily chart of the 200 most streamed...
Social influence analysis is a very popular research direction. This article analyzes the social net...
MGD: Music Genre Dataset Over recent years, the world has seen a dramatic change in the way people ...
The global music market moves billions of dollars every year, most of which comes from streamingplat...
Radio is a powerful and influential medium with a vast and encompassing audience reaching about 244...
Digital music distribution is increasingly powered by automated mechanisms that continuously capture...
The construction of rankings consists of ordering retrieved results according to certain criteria. R...
Using regression and classification machine learning algorithms, this study explores audio features ...
The Billboard Hot 100 has been the main record chart for popular music in the American music industr...
This paper uses the data crawled from the AllMusic website to establish a directional network of fol...
In the music market, superstars significantly dominate the market share, while predicting the top hi...