MERIT: Learning Disentangled Music Representations for Audio Similarity
About
Current music similarity models typically compute a single, monolithic score, entangling distinct musical dimensions like melody, rhythm, and timbre. This limits user control and interpretability, making it impossible to execute nuanced queries. We introduce MERIT, a framework for learning disentangled, factor-specific music representations tailored to these three core dimensions. To overcome the lack of isolated musical variations in real-world audio, we use a novel training strategy that uses conditional audio generation and source-separated stems to strongly encourage single-factor variation in training data. Our evaluations demonstrate strong factor-wise disentanglement. Each head responds strongly to its intended perceptual dimension while remaining near chance on the others, a representational property that holds across both the synthetic training domain and independent real-world audio.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Cover identification | Covers80 | Accuracy69.9 | 4 | |
| Rhythmic groove selectivity | Ballroom | Accuracy88 | 4 | |
| Instrument-class selectivity | MUSDB18 HQ | Accuracy78.9 | 4 |