Joint Learning of Wording and Formatting for Singable Melody-to-Lyric Generation

arXiv — cs.CLMonday, December 15, 2025 at 5:00:00 AM
  • A new study presents a model for generating singable lyrics from melodies, addressing the existing gap between machine-generated and human-written lyrics. This model incorporates joint learning of wording and formatting, enhancing its ability to meet specific lyrical structures and prosodic patterns through a self-supervised training phase on a large corpus of lyrics.
  • The advancements in this model are significant as they improve the quality and adherence to lyrical requirements, achieving notable gains in both line and syllable counts. This progress could lead to more sophisticated applications in music generation, potentially transforming how songwriters and composers utilize AI in their creative processes.
  • This development reflects a broader trend in AI research, where models are increasingly being designed to understand and replicate complex human creative tasks. The integration of musicological insights into AI training methodologies highlights a growing recognition of the importance of interdisciplinary approaches in enhancing AI capabilities, particularly in creative fields.
— via World Pulse Now AI Editorial System

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