I Said it First: Topological Analysis of Lyrical Influence Networks

We present an analysis of musical influence using intact lyrics of over 550,000 songs, extending existing research on lyrics through a novel approach using directed networks. We form networks of lyrical influence over time at the level of three-word phrases, weighted by tf-idf. An edge reduction analysis of strongly connected components suggests highly central artist, songwriter, and genre network topologies. Visualizations of the genre network based on multidimensional scaling confirm network centrality and provide insight into the most influential genres at the heart of the network. Next, we present metrics for influence and self-referential behavior, examining their interactions with network centrality and with the genre diversity of songwriters. Here, we uncover a negative correlation between songwriters’ genre diversity and the robustness of their connections. By examining trends among the data for top genres, songwriters, and artists, we address questions related to clustering, influence, and isolation of nodes in the networks. We conclude by discussing promising future applications of lyrical influence networks in music information retrieval research. The networks constructed in this study are made publicly available for research purposes.

[1]  Hiromasa Fujihara,et al.  Hyperlinking Lyrics: A Method for Creating Hyperlinks Between Phrases in Song Lyrics , 2008, ISMIR.

[2]  R N Shepard,et al.  Multidimensional Scaling, Tree-Fitting, and Clustering , 1980, Science.

[3]  Menno van Zaanen,et al.  Automatic Mood Classification Using TF*IDF Based on Lyrics , 2010, ISMIR.

[4]  Markus Koppenberger,et al.  Natural language processing of lyrics , 2005, ACM Multimedia.

[5]  Ge Wang,et al.  Musical Influence Network Analysis and Rank of Sample-Based Music , 2011, ISMIR.

[6]  Alexandra L. Uitdenbogerd,et al.  In Your Eyes: Identifying Clichés in Song Lyrics , 2012, ALTA.

[7]  Ronaldo Menezes,et al.  Using Network Sciences to Rank Musicians and Composers in Brazilian Popular Music , 2011, ISMIR.

[8]  Xing Wang,et al.  Music Emotion Classification of Chinese Songs based on Lyrics Using TF*IDF and Rhyme , 2011, ISMIR.

[9]  W. K. Campbell,et al.  Tuning in to psychological change: Linguistic markers of psychological traits and emotions over time in popular U.S. song lyrics. , 2011 .

[10]  Beth Logan,et al.  Semantic analysis of song lyrics , 2004, 2004 IEEE International Conference on Multimedia and Expo (ICME) (IEEE Cat. No.04TH8763).

[11]  Nick Collins,et al.  Computational Analysis of Musical Influence: A Musicological Case Study Using MIR Tools , 2010, ISMIR.

[12]  Michael McGill,et al.  Introduction to Modern Information Retrieval , 1983 .

[13]  Michael Fell,et al.  Lyrics-based Analysis and Classification of Music , 2014, COLING.

[14]  Reginald D. Smith The network of collaboration among rappers and its community structure , 2005, physics/0511215.

[15]  Ye Wang,et al.  Quantifying Lexical Novelty in Song Lyrics , 2015, ISMIR.