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Polyphonic Music Generation by Modeling Temporal Dependencies Using a RNN-DBN

Published 26 Dec 2014 in cs.LG, cs.AI, and cs.NE | (1412.7927v1)

Abstract: In this paper, we propose a generic technique to model temporal dependencies and sequences using a combination of a recurrent neural network and a Deep Belief Network. Our technique, RNN-DBN, is an amalgamation of the memory state of the RNN that allows it to provide temporal information and a multi-layer DBN that helps in high level representation of the data. This makes RNN-DBNs ideal for sequence generation. Further, the use of a DBN in conjunction with the RNN makes this model capable of significantly more complex data representation than an RBM. We apply this technique to the task of polyphonic music generation.

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