Open science in machine learning

  title={Open science in machine learning},
  author={J. Vanschoren and M. Braun and Cheng Soon Ong},
  • J. Vanschoren, M. Braun, Cheng Soon Ong
  • Published 2014
  • Computer Science
  • ArXiv
  • We present OpenML and mldata, open science platforms that provides easy access to machine learning data, software and results to encourage further study and application. They go beyond the more traditional repositories for data sets and software packages in that they allow researchers to also easily share the results they obtained in experiments and to compare their solutions with those of others. 
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