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SongSage: A Large Musical Language Model with Lyric Generative Pre-training

About

Large language models have achieved significant success in various domains, yet their understanding of lyric-centric knowledge has not been fully explored. In this work, we first introduce PlaylistSense, a dataset to evaluate the playlist understanding capability of language models. PlaylistSense encompasses ten types of user queries derived from common real-world perspectives, challenging LLMs to accurately grasp playlist features and address diverse user intents. Comprehensive evaluations indicate that current general-purpose LLMs still have potential for improvement in playlist understanding. Inspired by this, we introduce SongSage, a large musical language model equipped with diverse lyric-centric intelligence through lyric generative pretraining. SongSage undergoes continual pretraining on LyricBank, a carefully curated corpus of 5.48 billion tokens focused on lyrical content, followed by fine-tuning with LyricBank-SFT, a meticulously crafted instruction set comprising 775k samples across nine core lyric-centric tasks. Experimental results demonstrate that SongSage exhibits a strong understanding of lyric-centric knowledge, excels in rewriting user queries for zero-shot playlist recommendations, generates and continues lyrics effectively, and performs proficiently across seven additional capabilities. Beyond its lyric-centric expertise, SongSage also retains general knowledge comprehension and achieves a competitive MMLU score. We will keep the datasets inaccessible due to copyright restrictions and release the SongSage and training script to ensure reproducibility and support music AI research and applications, the datasets release plan details are provided in the appendix.

Jiani Guo, Jiajia Li, Jie Wu, Zuchao Li, Yujiu Yang, Ping Wang• 2026

Related benchmarks

TaskDatasetResultRank
Language UnderstandingMMLU
Accuracy64.5
756
Lyrics ContinuationLyrics Continuation
Preference Ratio42.12
5
Lyrics CreationLyrics Evaluation Set
Preference Ratio33.38
5
Music comprehensionZIQI-Eval
Accuracy62.4
5
Emotion DetectionSongSage lyric-centric evaluation set
Accuracy35.7
3
Generate Song TitleSongSage lyric-centric evaluation set
F1 Score56.37
3
Infer ArtistSongSage lyric-centric (test)
Exact Match0.2155
3
Playlist to DescriptionSongSage playlist-centric (evaluation set)
Emb Sim89.51
3
Playlist to TagsSongSage playlist-centric (evaluation set)
Precision45.8
3
User-query RewriteSongSage playlist-centric (evaluation set)
R@113.69
3
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