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NTIS 바로가기The journal of Bigdata = 한국빅데이터학회지, v.5 no.2, 2020년, pp.215 - 229
나광택 (데이터애널리틱스랩) , 이진영 (데이터애널리틱스랩) , 김은찬 (데이터애널리틱스랩) , 이효찬 (데이터애널리틱스랩)
The interest in machine learning is growing in all industries, but it is difficult to apply it to real-world tasks because of inexplicability. This paper introduces a case of developing a financial customer churn prediction model for a securities company, and introduces the research results on an at...
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