See Architecture and Components for the narrative explanation of these relationships.
classDiagram
Experiment --> Dataset
Experiment --> RunManager
Experiment --> Augmenter
Experiment --> FeatureSet
Experiment --> Configuration
RunManager --> Model
Experiment --> Reporter
Dataset <|-- Dataset_csv
Model <|-- Model_svm
Model <|-- Model_xgb
Model <|-- Model_mlp
Model <|-- Model_svr
Model <|-- Model_xgr
Model <|-- Model_mlp_reg
FeatureSet <|-- Opensmile_set
FeatureSet <|-- Spectraloader
FeatureSet <|-- MLD_set
FeatureSet <|-- OpenXbow
FeatureSet <|-- Wav2Vec
FeatureSet <|-- Trill
class Experiment{
+ Report reports
+ Dataframe df_test
+ Dataframe df_train
+ load_datasets()
+ fill_train_and_tests()
+ plot_distribution()
+ augment_train()
+ extract_feats()
+ init_runmanager()
+ run()
}
class FeatureSet{
+ pd.Dataframe df
+ extract()
}
class RunManager{
+ epochs
+ runs
}
class Augmenter{
+ augment()
}
class Model{
+ train()
+ predict()
+ predict_sample()
+ store()
+ load()
}
class Dataset{
+ Dataframe df_test
+ Dataframe df_train
+ load()
+ split()
+ prepare_labels()
}
class Model_svm{
+float C
}
class Model_xgb{
}
class Model_mlp{
+ loss_function
+ optimizer
+ learning_rate
}