{ "root_path": "C:/tmp_data/extract_feature/", "upload_path": "C:/tmp_data/extract_feature/upload_models/", "feature_file_name": "multi_features_data_simu5.pkl", "Is_train_autoencoder": false, "autoencoder_structure": 4, "L1": { "noise_threshold": 0.01, "_noise_threshold_dsp": "the number less of cluster than the threshold, consider to be noise", "choose_model": "Hierarchical", "_choose_model_dsp": "options, Hierarchical, DBSCAN", "Hierarchical_power_params": [ [ 0.3, 3, 4, 0.9 ], [ 0.2, 3, 5, 0.9 ] ], "_param1_dsp": "param 1 is factor ,the stable indicattor (less than value)(difference from the reverse previous 2 level)", "_param2_dsp": "param 2 is min number of cluster", "_param3_dsp": "param 3 is max number of cluster", "_param4_dsp": "param 4 is standby threshold (percentage)", "Is_save_model": true, "Hierarchical_vib_params": [ [ 0.2, 4, 10, 0.5 ] ], "_Hierarchical_vib_params_dsp": "For vibration, the format is same", "L1_models_name": "L1_models.pkl" }, "L2": { "strategy": "consensus", "_strategy_dsp": "options: consensus, feature_fusion, meta_clustering, multi_view_cluster", "Is_save_model": true, "consensus_model": "GMM", "_consensus_model_dsp": "model using on each type of sensor clusting: KMeans, GMM", "result_type": "prob", "_result_type_dsp": "The input the consensus matrix is each submodel result: prob (probability), one-hot", "feature_fusion_pca_factor": 0.95, "_feature_fusion_pca_factor_dsp": "how much the PCA catch of the variance\uff0cfor feature_fusion, meta_clustering, multi_view_cluster", "feature_fusion_model": "GMM", "meta_clustering_model": "GMM", "number_class": 0, "_number_class_dsp": "The spicify cluster number of each type of sensor. 0 mean search optimal number base on certain score", "min_class": 3, "_min_class_dsp": "minimum cluster number for search optimal option", "max_class": 5, "_max_class_dsp": "maximum cluster number (not include) for search optimal option", "stable_indicator": 0.3, "_stable_indicator_dsp": "when change less than the value, consider it's stable", "covariance_type": "diag", "_covariance_type_dsp": "GMM parameter, effect on model size" } }