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arxiv: 1711.07682 · v1 · pith:FCVUUG3Enew · submitted 2017-11-21 · 💻 cs.SD · cs.AI· cs.IT· cs.LG· eess.AS· math.IT· stat.ML

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

classification 💻 cs.SD cs.AIcs.ITcs.LGeess.ASmath.ITstat.ML
keywords musicchordpolyphonictheoryapproachgenerationlstmlstms
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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.

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