长短期记忆模型作曲生成器

Maksym Shopynskyi, N. Golian, I. Afanasieva
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引用次数: 1

摘要

提出了一种基于递归神经网络的音乐生成方法。关键目标是创建一个模型,可以学习不同的音乐风格,然后根据之前探索的内容生成新的作品。该模型声明了一个函数,该函数具有记住时态状态和短数据片段的能力,以便将它们用于未来的预测。深度学习神经网络使用卷积核训练的一对多双轴LSTM模型生成多态音乐片段。使用深度强化学习(DRL)方法来鼓励研究并增加正在创作的音乐作品的全球一致性。对于定量和定性分析,这种方法在生成复调音乐时效果很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long Short-Term Memory Model Appliance for Generating Music Compositions
This paper represents an approach to the music generation based on a recurrent neural network. The key goal is to create a model, that can learn different musical styles, and then generate new compositions based on previously explored content. The model declares a function with the ability to remember the temporal state and short pieces of data to use them for future predictions. The deep-learned neural network uses a one-to-many bi-axial LSTM model trained with the convolutional kernel to generate a polymorphic music piece. A deep reinforcement learning (DRL) approach was used to encourage research and increase the global consistency of music compositions being created. For quantitative and qualitative analysis, this approach works well when generating polyphonic music.
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