BERT has proven to be a powerful language model in natural language processing and established an effective pre-training & fine-tuning methodology. We see that music, as a special form of language, can benefit from such methodology if we carefully handle its highly-structured and polyphonic properties. To this end, we propose MuseBERT and show that: 1) MuseBERT has detailed specification of note attributes and explicit encoding of music relations, without presuming any pre-defined sequential event order, 2) the pre-trained MuseBERT is not merely a language model, but also a controllable music generator, and 3) MuseBERT gives birth to various downstream music generation and analysis tasks with practical value. Experiment shows that the pre-t...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
Music generation using computers is a task that while interesting, has received comparatively littl...
Research applying machine learning to music modeling and generation typically proposes model archite...
Deep learning technology has been extensively studied for its potential in music, notably for creati...
Automatic music generation is an attractive topic in the interdisciplinary field of music and comput...
Automatic music generation has been gaining more attention in recent years. Existing approaches, how...
Machine learning allows automatic construction of generative models for music. However, they are lea...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
While deep generative models have become the leading methods for algorithmic composition, it remains...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
In this paper, we explore a generative music method that can compose atonal and tonal music in diffe...
Musicology is a growing focus in computer science. Past research has had success in automatically g...
The Bol Processor project originated in 1980 as a word processor facilitating the transcription of q...
Music composition is a complex, multi-modal human activity, engaging faculties of perception, memory...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
Music generation using computers is a task that while interesting, has received comparatively littl...
Research applying machine learning to music modeling and generation typically proposes model archite...
Deep learning technology has been extensively studied for its potential in music, notably for creati...
Automatic music generation is an attractive topic in the interdisciplinary field of music and comput...
Automatic music generation has been gaining more attention in recent years. Existing approaches, how...
Machine learning allows automatic construction of generative models for music. However, they are lea...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
While deep generative models have become the leading methods for algorithmic composition, it remains...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
In this paper, we explore a generative music method that can compose atonal and tonal music in diffe...
Musicology is a growing focus in computer science. Past research has had success in automatically g...
The Bol Processor project originated in 1980 as a word processor facilitating the transcription of q...
Music composition is a complex, multi-modal human activity, engaging faculties of perception, memory...
Drawing an analogy with automatic image completion systems, we propose Music SketchNet, a neural net...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
Music generation using computers is a task that while interesting, has received comparatively littl...
Research applying machine learning to music modeling and generation typically proposes model archite...