Abstract
Recent years have seen a boom in computational approaches to music analysis, yet each one is typically tailored to a specific analytical domain. In this work, we introduce AnalysisGNN, a novel graph neural network framework that leverages a data-shuffling strategy with a custom weighted multi-task loss and logit fusion between task-specific classifiers to integrate heterogeneously annotated symbolic datasets for comprehensive score analysis. We further integrate a Non-Chord-Tone prediction module, which identifies and excludes passing and non-functional notes from all tasks, thereby improving the consistency of label signals. Experimental evaluations demonstrate that AnalysisGNN achieves performance comparable to traditional static-dataset approaches, while showing increased resilience to domain shifts and annotation inconsistencies across multiple heterogeneous corpora.
| Original language | English |
|---|---|
| DOIs | |
| Publication status | Published - 2025 |
Fields of science
- 102003 Image processing
- 202002 Audiovisual media
- 102001 Artificial intelligence
- 102015 Information systems
- 102 Computer Sciences
JKU Focus areas
- Digital Transformation
Research output
- 1 Conference proceedings
-
AnalysisGNN: Unified Music Analysis with Graph Neural Networks
Karystinaios, E., Hentschel, J., Neuwirth, M. & Widmer, G., 2025, 17th International Symposium on Computer Music Multidisciplinary Research (CMMR) 2025. 1 ed.Research output: Chapter in Book/Report/Conference proceeding › Conference proceedings › peer-review
Open Access
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