Predicting Golgi-Resident Protein Types Using Conditional Covariance Minimization With XGBoost Based on Multiple Features Fusion
Hongyan Zhou(University of North Carolina at Chapel Hill), Bin Yu(University of Science and Technology of China), Qin Ma(The Ohio State University Comprehensive Cancer Center – Arthur G. James Cancer Hospital and Richard J. Solove Research Institute), Minghui Wang(Qingdao University of Science and Technology), Cheng Chen(Carnegie Mellon University)
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