Corpus ID: 17260510

Improved Audio Classification Using a Novel Non-Linear Dimensionality Reduction Ensemble Approach

@inproceedings{Dupont2013ImprovedAC,
  title={Improved Audio Classification Using a Novel Non-Linear Dimensionality Reduction Ensemble Approach},
  author={St{\'e}phane Dupont and Thierry Ravet},
  booktitle={ISMIR},
  year={2013}
}
  • Stéphane Dupont, Thierry Ravet
  • Published in ISMIR 2013
  • Computer Science
  • Two important categories of machine learning methodologies have recently attracted much interest in classification research and its applications. On one side, unsupervised and semi-supervised learning allow to benefit from the availability of larger sets of training data, even if not fully annotated with class labels, and of larger sets of diverse feature representations, through novel dimensionality reduction schemes. On the other side, ensemble methods allow to benefit from more diversity in… CONTINUE READING

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