%Aigaion2 BibTeX export from Knowledge Engineering Publications
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@INPROCEEDINGS{lozanam2013nips4b,
        author = {Loza Menc{\'{\i}}a, Eneldo and Nam, Jinseok and Lee, Dong-Hyun},
        editor = {Glotin, H. and LeCun, Yann and Mallat, St{\'{e}}phane and Tchernichovski, Ofer and Arti{\`{e}}res, Thierry and Halkias, Xanadu},
         month = dec,
         title = {Learning multi-labeled bioacoustic samples with an unsupervised feature learning approach},
     booktitle = {Proceedings of Neural Information Scaled for Bioacoustics, from Neurons to Big Data},
          year = {2013},
         pages = {184-189},
  organization = {NIPS Int. Conf.},
          note = {Proceedings of NIPS4B workshop joint to NIPS},
          issn = {979-10-90821-04-0},
           url = {http://www.ke.tu-darmstadt.de/publications/papers/lozanam2013nips4b.pdf},
      abstract = {Multi-label Bird Species Classiļ¬cation competition provides an excellent oppor-
tunity to analyze the effectiveness of acoustic processing and mutlilabel learning. We propose an unsupervised feature extraction and generation approach based on latest advances in deep neural network learning, which can be applied generically to acoustic data.  With state-of-the-art approaches from multilabel learning, we achieved top positions in the competition, only surpassed by teams with profound expertise in acoustic data processing.}
}