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Exploring annotations for musical pattern discovery gathered with digital annotation tools

Darian Tomašević, Stephan Wells, Iris Yuping Ren, Anja Volk, Matevž Pesek

2021Journal of Mathematics and Music18 citationsDOIOpen Access PDF

Abstract

The study of inter-annotator agreement in musical pattern annotations has gained increased attention over the past few years. While expert annotations are often taken as the reference for evaluating pattern discovery algorithms, relying on just one reference is not usually sufficient to capture the complex musical relations between patterns. In this paper, we address the potential of digital annotation tools to enable large-scale annotations of musical patterns, by comparing datasets gathered with two recently developed digital tools. We investigate the influence of the tools and different annotator backgrounds on the annotation process by performing inter-annotator agreement analysis and feature-based analysis on the annotated patterns. We discuss implications for further adaptation of annotation tools, and the potential for deriving reference data from such rich annotation datasets for the evaluation of automatic pattern discovery algorithms in the future.

Topics & Concepts

AnnotationComputer scienceProcess (computing)Feature (linguistics)Artificial intelligenceInformation retrievalMusicalNatural language processingData scienceLinguisticsArtVisual artsOperating systemPhilosophyMusic and Audio ProcessingNeuroscience and Music PerceptionMusic Technology and Sound Studies
Exploring annotations for musical pattern discovery gathered with digital annotation tools | Litcius