def pacfs_classifier(target_names): print("* Loading PAC Feature Selection Model...") with open(main.MODELLO_PAC_FS, 'rb') as file: model_pacfs = pickle.load(file) print("* Model PAC Feature Selection loaded") # continually pool for new text to classify runModel(model_pacfs, main.PACFS_QUEUE, target_names)
def pac_classifier(target_names): print("* Loading PAC Model...") with open(main.MODELLO_PAC, 'rb') as file: model_pac = pickle.load(file) print("* Model PAC loaded") # continually pool for new text to classify runModel(model_pac, main.PAC_QUEUE, target_names)
def svm_classifier(target_names): print("* Loading SVM Model...") with open(main.MODELLO_SVM, 'rb') as file: model_svm=pickle.load(file) print("* Model SVM loaded") # continually pool for new text to classify runModel(model_svm, main.SVM_QUEUE, target_names)
def cnb_classifier(target_names): print("* Loading CNB Model...") with open(main.MODELLO_CNB, 'rb') as file: model_cnb = pickle.load(file) print("* Model CNB loaded") # continually pool for new text to classify runModel(model_cnb, main.CNB_QUEUE, target_names)
def mlp_classifier(target_names): print("* Loading MLP Model...") with open(main.MODELLO_MLP, 'rb') as file: model_mlp = pickle.load(file) print("* Model MLP loaded") # continually pool for new text to classify runModel(model_mlp, main.MLP_QUEUE, target_names)