Discovering and Visualizing Prototypical Artists by Web-Based Co-Occurrence Analysis

Detecting artists that can be considered as prototypes for particular genres or styles of music is an interesting task. In this paper, we present an approach that ranks artists according to their prototypicality. To calculate such a ranking, we use asymmetric similarity matrices obtained via co-occurrence analysis of artist names on web pages. We demonstrate our approach on a data set containing 224 artists from 14 genres and evaluate the results using the rank correlation between the prototypicality ranking and a ranking obtained by page counts of search queries to Google that contain artist and genre. High positive rank correlations are achieved for nearly all genres of the data set. Furthermore, we elaborate a visualization method that illustrates similarities between artists using the prototypes of all genres as reference points. On the whole, we show how to create a prototypicality ranking and use it, together with a similarity matrix, to visualize a music repository.

[1]  N. Biggs THE TRAVELING SALESMAN PROBLEM A Guided Tour of Combinatorial Optimization , 1986 .

[2]  François Pachet,et al.  Scaling up music playlist generation , 2002, Proceedings. IEEE International Conference on Multimedia and Expo.

[3]  Markus Schedl,et al.  An Explorative, Hierarchical User Interface to Structured Music Repositories , 2003 .

[4]  Gerhard Widmer,et al.  Exploring Music Collections by Browsing Different Views , 2004, Computer Music Journal.

[5]  Peter Knees,et al.  Artist Classification with Web-Based Data , 2004, ISMIR.

[6]  Ichiro Fujinaga,et al.  Web Services for Music Information Retrieval , 2004, ISMIR.

[7]  Daniel P. W. Ellis,et al.  The Quest for Ground Truth in Musical Artist Similarity , 2002, ISMIR.

[8]  DAVID G. KENDALL,et al.  Introduction to Mathematical Statistics , 1947, Nature.

[9]  Rajeev Motwani,et al.  The PageRank Citation Ranking : Bringing Order to the Web , 1999, WWW 1999.

[10]  Markus Koppenberger,et al.  The emergence of complex network patterns in music networks , 2004, ISMIR.

[11]  Steven Skiena,et al.  The Algorithm Design Manual , 2020, Texts in Computer Science.

[12]  Beth Logan,et al.  Content-Based Playlist Generation: Exploratory Experiments , 2002, ISMIR.

[13]  François Pachet,et al.  Musical data mining for electronic music distribution , 2001, Proceedings First International Conference on WEB Delivering of Music. WEDELMUSIC 2001.

[14]  Allen T. Craig,et al.  Introduction to Mathematical Statistics (6th Edition) , 2005 .

[15]  Peter Knees,et al.  A WEB-BASED APPROACH TO ASSESSING ARTIST SIMILARITY USING CO-OCCURRENCES , 2005 .

[16]  Steve Lawrence,et al.  Inferring Descriptions and Similarity for Music from Community Metadata , 2002, ICMC.