[[1] C. Apté, F. Damerau, and S. M. Weiss. Toward language independent automated learning of text categorization models. In Proceedings of the 17th Annual International ACM SIGIR Conference on Research and Development in Information Retrieval, pages 23–30, Dublin, Ireland, 1994. Springer-Verlag. ⇒17110.1007/978-1-4471-2099-5_3]Search in Google Scholar
[[2] J. Atherton and B. Kaneshiro. I said it first: Topological analysis of lyrical influence networks. In ISMIR, pages 654–660, 2016. ⇒162]Search in Google Scholar
[[3] T. Bertin-Mahieux, D. P. W. Ellis, B. Whitman,and P. Lamere. The million song dataset. In A. Klapuri and C. Leider, editors, ISMIR, pages 591–596. University of Miami, 2011. ⇒159, 160]Search in Google Scholar
[[4] M. Besson, F. Faita, I. Peretz, A.-M. Bonnel, and J. Requin. Singing in the brain: Independence of lyrics and tunes. Psychological Science, 9(6):494–498, 1998. ⇒160, 16910.1111/1467-9280.00091]Search in Google Scholar
[[5] C. M. Bishop. Pattern recognition and machine learning. Springer, 2006. ⇒174]Search in Google Scholar
[[6] M. J. T. Carneiro. Towards the discovery of temporal patterns in music listening using Last.fm profiles. Master’s thesis, Faculdade de Engenharia da Universidade do Porto, 2011. ⇒170]Search in Google Scholar
[[7] O. Chapelle, B. Schölkopf, and A. Zien. Semi-Supervised Learning. The MIT Press, 2006. ⇒17810.7551/mitpress/9780262033589.001.0001]Search in Google Scholar
[[8] K. Choi, Gy. Fazekas, M. Sandler, and K. Cho. Convolutional recurrent neural networks for music classification. In ICASSP, pages 2392–2396. IEEE, 2017. ⇒16110.1109/ICASSP.2017.7952585]Search in Google Scholar
[[9] K. Choi, J. H. Lee, X. Hu, and J. S. Downie. Music subject classification based on lyrics and user interpretations. In Proceedings of the 79th ASIS&T Annual Meeting: Creating Knowledge, Enhancing Lives through Information & Technology. American Society for Information Science, 2016. ⇒161]Search in Google Scholar
[[10] H. Corona and M. P. O’Mahony. An exploration of mood classification in the million songs dataset. In 12th Sound and Music Computing Conference,Ireland, 2015. Music Technology Research Group, Department of Computer Science, Maynooth University. ⇒161]Search in Google Scholar
[[11] D. R. Cox. The regression analysis of binary sequences. Journal of the Royal Statistical Society. Series B (Methodological), 2(2):215–242, 1958. ⇒17410.1111/j.2517-6161.1958.tb00292.x]Search in Google Scholar
[[12] S. Dieleman, P. Brakel, and B. Schrauwen. Audio-based music classification with a pretrained convolutional network. In ISMIR, pages 669–674, 2011. ⇒161]Search in Google Scholar
[[13] S. Dieleman and B. Schrauwen. Multiscale approaches to music audio feature learning. In ISMIR, pages 116–121, 2013. ⇒161]Search in Google Scholar
[[14] S. Dieleman and B. Schrauwen. End-to-end learning for music audio. In ICASSP, pages 6964–6968. IEEE, 2014. ⇒16110.1109/ICASSP.2014.6854950]Search in Google Scholar
[[15] D. P. W. Ellis. Extracting information from music audio. Communications of the ACM, 49(8):32–37, 2006. ⇒16010.1145/1145287.1145310]Search in Google Scholar
[[16] R. J. Ellis, Z. Xing, J. Fang, and Y. Wang. Quantifying lexical novelty in song lyrics. In ISMIR, pages 694–700, 2015. ⇒162]Search in Google Scholar
[[17] M. Fell and C. Sporleder. Lyrics-based analysis and classification of music. In J. Hajic and J. Tsujii, editors, COLING, pages 620–631. ACL, 2014. ⇒ 159, 161, 170, 172, 174]Search in Google Scholar
[[18] J. Fürnkranz. A study using n-gram features for text categorization, 1998. ⇒171]Search in Google Scholar
[[19] W. H. Gomaa and A. A. Fahmy. A survey of text similarity approaches. International Journal of Computer Applications, 68(13):13–18, April 2013. ⇒17210.5120/11638-7118]Search in Google Scholar
[[20] S. Gupta. Music data analysis: A state-of-the-art survey. arXiv preprint arXiv:1411.5014, 2014. ⇒160]Search in Google Scholar
[[21] P. Hamel and D. Eck. Learning features from music audio with deep belief networks. In ISMIR, volume 10, pages 339–344, 2010. ⇒161]Search in Google Scholar
[[22] H. Hirjee and D. G. Brown. Using automated rhyme detection to characterize rhyming style in rap music. Empirical Musicology Review, 5(4), 2010. ⇒172, 17810.18061/1811/48548]Search in Google Scholar
[[23] D. Jurafsky and J. H. Martin. Speech and language processing. 2017. 3rd edition draft. ⇒177]Search in Google Scholar
[[24] A. Kiss. Classification of hungarian folk music from Transylvania with convolutional neural networks. Master’s thesis, Faculty of Mathematics and Computer Science,Babeş–Bolyai University, Romania, 2018. ⇒161]Search in Google Scholar
[[25] P. Knees and M. Schedl. Music Similarity and Retrieval. Springer, Berlin–Heidelberg, 2016. ⇒16010.1007/978-3-662-49722-7]Search in Google Scholar
[[26] P. Knees, M. Schedl, and G. Widmer. Multiple lyrics alignment: Automatic retrieval of song lyrics. In ISMIR, pages 564–569, 2005. ⇒160]Search in Google Scholar
[[27] D. E. Knuth. The Art of Computer Programming, Vol. 3: Sorting and Searching. Addison-Wesley, Reading, MA, 1973. ⇒172]Search in Google Scholar
[[28] Q. Le and T. Mikolov. Distributed representations of sentences and documents. In Proceedings of The 31st International Conference on Machine Learning, pages 1188–1196, 2014. ⇒178]Search in Google Scholar
[[29] V. I. Levenshtein. Binary codes capable of correcting deletions, insertions, and reversals. Soviet physics doklady, 10(8):707–710, 1966. ⇒172]Search in Google Scholar
[[30] T. L. H. Li, A. B. Chan,and A. Chun. Automatic musical pattern feature extraction using convolutional neural network. In Proc. Int. Conf. Data Mining and Applications, 2010. ⇒161]Search in Google Scholar
[[31] D. Liang,H.Gu, and B. O’Connor. Music genre classification with the million song dataset. Technical report, Machine Learning Department, CMU, 2011. ⇒161, 170]Search in Google Scholar
[[32] J. P. G. Mahedero, A. Martinez, P. Cano, M. Koppenberger, and F. Gouyon. Natural language processing of lyrics. In ACM Multimedia, pages 475–478. ACM, 2005. ⇒17010.1145/1101149.1101255]Search in Google Scholar
[[33] R. Malheiro, R. Panda, P. Gomes, and R. Paiva. Classification and regression of music lyrics: Emotionally-significant features. In 8th International Conference on Knowledge Discovery and Information Retrieval, Porto, Portugal, 2016. ⇒16110.5220/0006037400450055]Search in Google Scholar
[[34] C. D. Manning, P. Raghavan,and H. Schütze. Introduction to information retrieval. Cambridge University Press, 2008. ⇒17410.1017/CBO9780511809071]Search in Google Scholar
[[35] M. Mauch, R. M. MacCallum, M. Levy, and A. M. Leroi. The evolution of popular music: USA 1960–2010. Royal Society Open Science, 2(5), 2015. ⇒16310.1098/rsos.150081445325326064663]Search in Google Scholar
[[36] R. Mayer, R. Neumayer, and A. Rauber. Rhyme and style features for musical genre classification by song lyrics. In J. P. Bello, E. Chew, and D. Turnbull, editors, ISMIR, pages 337–342, 2008. ⇒161, 170, 173, 174]Search in Google Scholar
[[37] R. Mayer and A. Rauber. Music genre classification by ensembles of audio and lyrics features. In A. Klapuri and C. Leider, editors, ISMIR, pages 675–680. University of Miami, 2011. ⇒159]Search in Google Scholar
[[38] C. McKay and I. Fujinaga. Musical genre classification: Is it worth pursuing and how can it be improved? In ISMIR, pages 101–106, 2006. ⇒161, 169, 170]Search in Google Scholar
[[39] J.-B. Michel, Y. K. Shen, A. P. Aiden, A. Veres, M. K. Gray, J. P. Pickett, D. Hoiberg,D.Clancy, P. Norvig,J.Orwant, S. Pinker, M. A. Nowak,and E. Lieberman Aiden. Quantitative analysis of culture using millions of digitized books. Science, 331:176–182, 2011. ⇒17810.1126/science.1199644327974221163965]Search in Google Scholar
[[40] T. Mikolov, K. Chen, G. Corrado,and J. Dean. Efficient estimation of word representations in vector space. arXiv preprint arXiv:1301.3781, 2013. ⇒178]Search in Google Scholar
[[41] T. Mikolov, I. Sutskever, K. Chen, G. S. Corrado,and J. Dean. Distributed representations of words and phrases and their compositionality. In Advances in Neural Information Processing Systems, pages 3111–3119, 2013. ⇒178]Search in Google Scholar
[[42] L. Németh. Automatic non-standard hyphenation in OpenOffice.org. TUGboat, 27(1):32–37, 2006. ⇒172]Search in Google Scholar
[[43] F. Pachet and D. Cazaly. A taxonomy of musical genres. In J.-J. Mariani and D. Harman, editors, RIAO, pages 1238–1245. CID, 2000. ⇒170]Search in Google Scholar
[[44] J. Pennington, R. Socher,and C. Manning. GloVe: Global vectors for word representation. In EMNLP, pages 1532–1543, 2014. ⇒17810.3115/v1/D14-1162]Search in Google Scholar
[[45] L. Philips. Hanging on the metaphone. Computer Language Magazine, 7(12):38, December 1990. ⇒178]Search in Google Scholar
[[46] L. Philips. The double metaphone search algorithm. C/C++ Users Journal, 18(6), June 2000. ⇒178]Search in Google Scholar
[[47] J. Pons, T. Lidy,and X. Serra. Experimenting with musically motivated convolutional neural networks. In CBMI, pages 1–6. IEEE, 2016. ⇒16110.1109/CBMI.2016.7500246]Search in Google Scholar
[[48] R. Priedhorsky, J. Chen, S. T. K. Lam, K. Panciera, L. Terveen,and J. Riedl. Creating, destroying, and restoring value in Wikipedia. In Proceedings of the 2007 international ACM conference on Supporting group work, pages 259–268. ACM, 2007. ⇒16010.1145/1316624.1316663]Search in Google Scholar
[[49] S. Reddy and K. Knight. Unsupervised discovery of rhyme schemes. In ACL (Short Papers), pages 77–82. The Association for Computer Linguistics, 2011. ⇒172]Search in Google Scholar
[[50] G. Salton, A. Wong, and A. C. S. Yang. A vector space model for automatic indexing. Communications of the ACM, 18:229–237, 1975. ⇒159, 17110.1145/361219.361220]Search in Google Scholar
[[51] H. Schreiber. Improving genre annotations for the million song dataset. In M. Müller and F. Wiering, editors, ISMIR, pages 241–247, 2015. ⇒170]Search in Google Scholar
[[52] F. Sebastiani. Machine learning in automated text categorization. ACM Computing Surveys, 34(1):1–47, 2002. ⇒17410.1145/505282.505283]Search in Google Scholar
[[53] S. Sigtia and S. Dixon. Improved music feature learning with deep neural networks. In ICASSP, pages 6959–6963. IEEE, 2014. ⇒16110.1109/ICASSP.2014.6854949]Search in Google Scholar
[[54] A. Singhi and D. G. Brown. Are poetry and lyrics all that different? In H.-M. Wang, Y.-H. Yang, and J. H. Lee, editors, Proceedings of the 15th International Society for Music Information Retrieval Conference, ISMIR 2014, Taipei, Taiwan, October 27–31, 2014, pages 471–476, 2014. ⇒161]Search in Google Scholar
[[55] B. L. Sturm. An analysis of the gtzan music genre dataset. In Proceedings of the second international ACM workshop on Music information retrieval with user-centered and multimodal strategies, pages 7–12. ACM, 2012. ⇒16010.1145/2390848.2390851]Search in Google Scholar
[[56] B. L. Sturm. A survey of evaluation in music genre recognition. In International Workshop on Adaptive Multimedia Retrieval, pages 29–66. Springer, 2012. ⇒16110.1007/978-3-319-12093-5_2]Search in Google Scholar
[[57] A. Swartz. MusicBrainz: a semantic Web service. IEEE Intelligent Systems, 17(1):76–77, 2002. ⇒16410.1109/5254.988466]Search in Google Scholar
[[58] A. Tsaptsinos. Lyrics-based music genre classification using a hierarchical attention network. In ISMIR, pages 694–701, 2017. ⇒162]Search in Google Scholar
[[59] G. Tzanetakis and P. Cook. Musical genre classification of audio signals. IEEE Transactions on speech and audio processing, 10(5):293–302, 2002. ⇒16010.1109/TSA.2002.800560]Search in Google Scholar
[[60] E. Zangerle, M. Tschuggnall, S. Wurzinger, and G. Specht. Alf-200k: Towards extensive multimodal analyses of music tracks and playlists. In European Conference on Information Retrieval, pages 584–590. Springer, 2018. ⇒16210.1007/978-3-319-76941-7_48]Search in Google Scholar