Developing of New a Tensorflow Tutorial Model on Machine Learning : Focusing on the Kaggle Titanic Dataset |
Kim, Dong Gil
(Gangwon EMbedded Software Cooperative Research Center)
Park, Yong-Soon (Gangwon EMbedded Software Cooperative Research Center) Park, Lae-Jeong (Gangneung-Wonju National Univ.) Chung, Tae-Yun (Gangneung-Wonju National Univ.) |
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