Frechet Music Distance: A Metric For Generative Symbolic Music Evaluation
Jan Retkowski, Jakub Stępniak, Mateusz Modrzejewski
Abstract
In this paper we introduce the Frechet Music Distance (FMD), a novel evaluation metric for generative symbolic music models, inspired by the Frechet Inception Distance (FID) in computer vision and Frechet Audio Distance (FAD) in generative audio. FMD calculates the distance between distributions of reference and generated symbolic music embeddings, capturing abstract musical features. We validate FMD across several datasets and models. Results indicate that FMD effectively differentiates model quality, providing a domain-specific metric for evaluating symbolic music generation, and establishing a reproducible standard for future research in symbolic music modeling.
Related Papers
WildFX: A DAW-Powered Pipeline for In-the-Wild Audio FX Graph Modeling2025-07-14MusiScene: Leveraging MU-LLaMA for Scene Imagination and Enhanced Video Background Music Generation2025-07-08TOMI: Transforming and Organizing Music Ideas for Multi-Track Compositions with Full-Song Structure2025-06-29Exploring Adapter Design Tradeoffs for Low Resource Music Generation2025-06-26Let Your Video Listen to Your Music!2025-06-23MuseControlLite: Multifunctional Music Generation with Lightweight Conditioners2025-06-23Benchmarking Music Generation Models and Metrics via Human Preference Studies2025-06-23AI-Generated Song Detection via Lyrics Transcripts2025-06-23