SCIENTIA SINICA Informationis, Volume 46 , Issue 8 : 1016-1034(2016) https://doi.org/10.1360/N112016-00065

Knowledge automation and its industrial application

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  • ReceivedMar 26, 2016
  • AcceptedJun 1, 2016


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