pyabsa.tasks.TextClassification.instructor.classifier_instructor¶
Classes¶
Module Contents¶
- class pyabsa.tasks.TextClassification.instructor.classifier_instructor.TCTrainingInstructor(config)¶
Bases:
pyabsa.framework.instructor_class.instructor_template.BaseTrainingInstructor- _init_misc()¶
Initialize miscellaneous settings specific to the subclass implementation. This method should be implemented in a subclass.
- _load_dataset_and_prepare_dataloader()¶
Load the dataset and prepare the dataloader. This method should be implemented in a subclass.
- reload_model(ckpt='./init_state_dict.bin')¶
- _train(criterion)¶
Train the model on a given criterion.
- Parameters:
criterion – The loss function used to train the model.
- Returns:
If there is only one validation dataloader, return the training results. If there are more than one validation dataloaders, perform k-fold cross-validation and return the results.
- _train_and_evaluate(criterion)¶
Train and evaluate the model. This method should be implemented in a subclass.
- _k_fold_train_and_evaluate(criterion)¶
Train and evaluate the model using k-fold cross validation. This method should be implemented in a subclass.
- _evaluate_acc_f1(test_dataloader)¶
Evaluate the accuracy and F1 score of the model. This method should be implemented in a subclass.
- run()¶