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NTIS 바로가기韓國ITS學會 論文誌 = The journal of the Korea Institute of Intelligent Transportation Systems, v.20 no.3, 2021년, pp.59 - 73
노유진 (도로교통공단 운전면허본부) , 배상훈 (부경대학교 공간정보시스템공학과)
There are many lives lost due traffic accidents, and which have not decreased despite advances in technology. In order to prevent traffic accidents, it is necessary to accurately forecast how they will change in the future. Until now, traffic accident-frequency forecasting has not been a major resea...
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