Ensemble variable selection using genetic algorithm |
Seogyoung, Lee
(Department of Statistics, Korea University)
Martin Seunghwan, Yang (Department of Statistics, Korea University) Jongkyeong, Kang (Department of Information Statistics, Kangwon National University) Seung Jun, Shin (Department of Statistics, Korea University) |
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