Corpus ID: 14097803

Learning Contextualized Music Semantics from Tags via a Siamese Network

  title={Learning Contextualized Music Semantics from Tags via a Siamese Network},
  author={Ubai Sandouk and Ke Chen},
  • Ubai Sandouk, Ke Chen
  • Published 2015
  • Computer Science, Mathematics
  • ArXiv
  • Music information retrieval faces a challenge in modeling contextualized musical concepts formulated by a set of co-occurring tags. In this paper, we investigate the suitability of our recently proposed approach based on a Siamese neural network in fighting off this challenge. By means of tag features and probabilistic topic models, the network captures contextualized semantics from tags via unsupervised learning. This leads to a distributed semantics space and a potential solution to the out… CONTINUE READING
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