Methods of Automated Music Comparison Based on Multi-Objective Metrics of Network Similarity

Author:

Muszynski Szymon1ORCID,Tarapata Zbigniew1ORCID

Affiliation:

1. Faculty of Cybernetics, Military University of Technology, Gen. Sylwestra Kaliskiego 2 Street, 00-908 Warsaw, Poland

Abstract

This paper describes methods and techniques of measuring similarity of musical pieces. This topic is crucial in plagiarism control and arrangement evaluation as these processes depend in particular on a previous experience and subjective aesthetical feelings of a researcher. Although there are some common frameworks for comparing musical pieces (i.e., some characteristics of compared pieces and details to consider), having a set of comprehensive metrics would allow to make such comparisons more unbiased. We show that such a comparison can be made using a network representation of a track. Tracks are compared using a structural and quantitative similarity between matrices corresponding to these musical pieces. In this article, we describe network representations of music. We introduce a set of specific methods of calculating this similarity and study their characteristics. We also evaluate them on the set of test pieces and provide results. We show that this method can be especially used for detecting instances of plagiarism between pieces and evaluating similarity of created arrangements, thus measuring their “innovativeness”.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference24 articles.

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2. Liu, H., and Yang, Y. (2018, January 17–20). Lead Sheet Generation and Arrangement by Conditional Generative Adversarial Network. Proceedings of the 17th IEEE International Conference on Machine Learning and Applications (ICMLA), Orlando, FL, USA.

3. Lee, S.G., Hwang, U., Min, S., and Yoon, S. (2017). Polyphonic Music Generation with Sequence Generative Adversarial Networks. arXiv.

4. Huang, A. (2019). Deep Learning for Music Composition: Generation, Recommendation and Control. [Doctoral Dissertation, Harvard University]. Available online: https://dash.harvard.edu/bitstream/handle/1/42029468/HUANG-DISSERTATION-2019.pdf.

5. Huang, C.Z., Hawthorne, C., Roberts, A., Dinculescu, M., Wexler, J., Hong, L., and Howcroft, J. (2019, January 4–8). The Bach Doodle: Approachable Music Composition with Machine Learning at Scale. Proceedings of the 20th International Society for Music Information Retrieval Conference, Delft, The Netherlands.

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