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ComposerX: Multi-Agent Symbolic Music Composition with LLMs

28 April 2024
Qixin Deng
Qikai Yang
Ruibin Yuan
Yipeng Huang
Yi Wang
Xubo Liu
Zeyue Tian
Jiahao Pan
Ge Zhang
Hanfeng Lin
Yizhi Li
Ying Ma
Jie Fu
Chenghua Lin
Emmanouil Benetos
Wenwu Wang
Guangyu Xia
Wei Xue
Yi-Ting Guo
    LLMAG
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Abstract

Music composition represents the creative side of humanity, and itself is a complex task that requires abilities to understand and generate information with long dependency and harmony constraints. While demonstrating impressive capabilities in STEM subjects, current LLMs easily fail in this task, generating ill-written music even when equipped with modern techniques like In-Context-Learning and Chain-of-Thoughts. To further explore and enhance LLMs' potential in music composition by leveraging their reasoning ability and the large knowledge base in music history and theory, we propose ComposerX, an agent-based symbolic music generation framework. We find that applying a multi-agent approach significantly improves the music composition quality of GPT-4. The results demonstrate that ComposerX is capable of producing coherent polyphonic music compositions with captivating melodies, while adhering to user instructions.

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