SDAICLLGASJul 5, 2021

DeepRapper: Neural Rap Generation with Rhyme and Rhythm Modeling

arXiv:2107.01875v1716 citations
Originality Incremental advance
AI Analysis

This addresses rap generation for music AI applications, but it is incremental as it builds on prior work by adding rhythmic modeling.

The authors tackled rap generation by modeling both rhymes and rhythms, developing DeepRapper, a Transformer-based system that generates creative and high-quality raps, as demonstrated by objective and subjective evaluations.

Rap generation, which aims to produce lyrics and corresponding singing beats, needs to model both rhymes and rhythms. Previous works for rap generation focused on rhyming lyrics but ignored rhythmic beats, which are important for rap performance. In this paper, we develop DeepRapper, a Transformer-based rap generation system that can model both rhymes and rhythms. Since there is no available rap dataset with rhythmic beats, we develop a data mining pipeline to collect a large-scale rap dataset, which includes a large number of rap songs with aligned lyrics and rhythmic beats. Second, we design a Transformer-based autoregressive language model which carefully models rhymes and rhythms. Specifically, we generate lyrics in the reverse order with rhyme representation and constraint for rhyme enhancement and insert a beat symbol into lyrics for rhythm/beat modeling. To our knowledge, DeepRapper is the first system to generate rap with both rhymes and rhythms. Both objective and subjective evaluations demonstrate that DeepRapper generates creative and high-quality raps with rhymes and rhythms. Code will be released on GitHub.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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