Ensemble Method for Predicting Particulate Matter and Odor Intensity |
Lee, Jong-Yeong
(Dept. of Industrial and Information Systems Engineering, Jeonbuk National University)
Choi, Myoung Jin (Dept. of Defense Weapon System, Howon University) Joo, Yeongin (Dept. of Industrial and Information Systems Engineering, Jeonbuk National University) Yang, Jaekyung (Dept. of Industrial and Information Systems Engineering, Jeonbuk National University) |
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