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      Organizing the World’s Machine Learning Information

      Vanschoren, Joaquin; Blockeel, Hendrik; Pfahringer, Bernhard; Holmes, Geoffrey
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      Organizing the World's Machine Learning Information.pdf
      1001.Kb
      DOI
       10.1007/978-3-540-88479-8_50
      Link
       www.springerlink.com
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      Citation
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      Vanschoren, J., Blockeel, H., Pfahringer, B. & Holmes, G. (2009). Organizing the world’s machine learning information. In W. Wobcke & M. Zhang, Proceedings of Third International Symposium, ISoLA 2008, Porto Sani, Greece, October 13-15, 2008(pp. 693-708). Berlin: Springer.
      Permanent Research Commons link: https://hdl.handle.net/10289/1804
      Abstract
      All around the globe, thousands of learning experiments are being executed on a daily basis, only to be discarded after interpretation. Yet, the information contained in these experiments might have uses beyond their original intent and, if properly stored, could be of great use to future research. In this paper, we hope to stimulate the development of such learning experiment repositories by providing a bird’s-eye view of how they can be created and used in practice, bringing together existing approaches and new ideas. We draw parallels between how experiments are being curated in other sciences, and consecutively discuss how both the empirical and theoretical details of learning experiments can be expressed, organized and made universally accessible. Finally, we discuss a range of possible services such a resource can offer, either used directly or integrated into data mining tools.
      Date
      2009
      Type
      Conference Contribution
      Publisher
      Springer
      Rights
      This is the author’s final draft version of an paper published in the Proceedings of Third International Symposium, ISoLA 2008, Porto Sani, Greece, October 13-15, 2008. ©2009 Springer.
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      • Computing and Mathematical Sciences Papers [1454]
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