TY - JOUR T1 - A Study on the Prediction Accuracy of Machine Learning using De-Identified Personal Information AU - Jung, Hongju AU - Lee, Nayoung AU - Seol, Soo-jin AU - Han, Kyeong-Seok JO - Journal of KIISE, JOK PY - 2020 DA - 2020/1/14 DO - 10.5626/JOK.2020.47.10.906 KW - k-anonymity KW - machine learning KW - de-identification KW - decision tree AB - The de-identification of personal information is emerging due to the revision of the Personal Information Protection and Personal Information Protection Act. In addition, the use of artificial intelligence and machine learning is becoming a driving force in the Fourth Industrial Revolution. In this paper, we experimentally verify the predictive accuracy of a machine learning decision tree algorithm using de-identified personal information by applying k-anonymity (k=2). The prediction results of the input data are compared to determine the limitations of using de-identified personal information in machine learning. According to the amendment of the Personal Information Protection Act, we propose that when using de-identified personal information in machine learning, the level of personal information de-identification and the analysis algorithm should be considered.