Author: Zheng Zhang; Zena Cai; Zhiying Tan; Congyu Lu; Gaihua Zhang; Yousong Peng
Title: Identification of viruses with the potential to infect human Document date: 2019_4_5
ID: lnch3qsq_7
Snippet: The machine learning models of k-nearest neighbor (KNN) (k=1), support vector machine (SVM) (using the linear kernel function), gaussian naive bayes classifier (GNBC), random forest (RF) (with default settings) and logistic regression (LR) (with default settings) were built with the default parameters using the package "scikit-learn" (version 0.20.2) (Pedregosa, Varoquaux et al. 2011) in Python (version 3.6.2)......
Document: The machine learning models of k-nearest neighbor (KNN) (k=1), support vector machine (SVM) (using the linear kernel function), gaussian naive bayes classifier (GNBC), random forest (RF) (with default settings) and logistic regression (LR) (with default settings) were built with the default parameters using the package "scikit-learn" (version 0.20.2) (Pedregosa, Varoquaux et al. 2011) in Python (version 3.6.2).
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