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JamBot: Music Theory Aware Chord Based Generation of Polyphonic Music with LSTMs

机译:jambot:音乐理论意识到基于和lstms的聚力音乐一代

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We propose a novel approach for the generation of polyphonic music based on LSTMs. We generate music in two steps. First, a chord LSTM predicts a chord progression based on a chord embedding. A second LSTM then generates polyphonic music from the predicted chord progression. The generated music sounds pleasing and harmonic, with only few dissonant notes. It has clear long-term structure that is similar to what a musician would play during a jam session. We show that our approach is sensible from a music theory perspective by evaluating the learned chord embeddings. Surprisingly, our simple model managed to extract the circle of fifths, an important tool in music theory, from the dataset.
机译:我们提出了一种基于LSTMS的多关音乐的一种新方法。我们以两个步骤生成音乐。首先,Chord LSTM基于嵌入的和弦嵌入来预测和弦进展。然后,第二LSTM从预测的和弦进程产生多关音乐。生成的音乐听起来令人愉悦和谐波,只有很少的异解。它具有明确的长期结构,类似于音乐家在堵塞会话期间会播放的长期结构。我们表明我们的方法是通过评估学习的和弦嵌入来源的音乐理论观点来明智。令人惊讶的是,我们的简单模型设法从数据集中提取了第五个圈子,这是音乐理论中的重要工具。

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