Open science in machine learning

作者: Joaquin Vanschoren , Mikio L. Braun , Cheng Soon Ong

DOI:

关键词: Data scienceOpen scienceArtificial intelligenceWorld Wide WebComputer scienceSoftwareMachine learning

摘要: We present OpenML and mldata, open science platforms that provides easy access to machine learning data, software results encourage further study application. They go beyond the more traditional repositories for data sets packages in they allow researchers also easily share obtained experiments compare their solutions with those of others.

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