Relationships between Keywords and Strong Beats in Lyrical Music
Callie C. Liao, Duoduo Liao, and Ellie L. Zhang

TL;DR
This study explores the correlation between keywords and strong beats in lyrical music, revealing that keywords predominantly align with strong beats, which can enhance AI song generation and rhythmic analysis.
Contribution
It introduces a novel analysis of keyword-beat relationships, develops tailored Lyrics-Rhythm Matching metrics, and proposes a new file format for capturing lyrical and rhythmic data.
Findings
80.8% of keywords land on strong beats
Matching score for keywords on strong beats is 0.765
Keywords are more reliable indicators of rhythmic structure
Abstract
Artificial Intelligence (AI) song generation has emerged as a popular topic, yet the focus on exploring the latent correlations between specific lyrical and rhythmic features remains limited. In contrast, this pilot study particularly investigates the relationships between keywords and rhythmically stressed features such as strong beats in songs. It focuses on several key elements: keywords or non-keywords, stressed or unstressed syllables, and strong or weak beats, with the aim of uncovering insightful correlations. Experimental results indicate that, on average, 80.8\% of keywords land on strong beats, whereas 62\% of non-keywords fall on weak beats. The relationship between stressed syllables and strong or weak beats is weak, revealing that keywords have the strongest relationships with strong beats. Additionally, the lyrics-rhythm matching score, a key matching metric measuring…
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Taxonomy
TopicsMusic and Audio Processing
MethodsALIGN · Focus
