Example #1
0
 def _eval_lex_model(label_est_samples, valid_samples) -> float:
     estimated_labelprops = {
         "estimated": calculate_labelprops(
             label_est_samples,
             _DATADEF.n_classes,
             _DATADEF.domain_names,
         )
     }
     datadef = get_datadef(_DATASET_NAME)
     datadef.load_labelprops_func = lambda _split: estimated_labelprops[
         _split
     ]
     metrics = eval_lexicon_model(
         model,
         datadef,
         valid_samples,
         vocab,
         use_source_individual_norm=_LEXICON_CONFIG[
             "use_source_individual_norm"
         ],
         labelprop_split="estimated",  # match _load_labelprops_func()
     )
     return metrics["valid_f1"]
            config,
            _DATADEF,
            train_samples=train_samples,
            valid_samples=valid_samples,
            vocab_size=config["vocab_size"],
            logdir=join(savedir, train_source),
            train_labelprop_split="train",
            valid_labelprop_split="train",
        )

        model = torch.load(join(savedir, train_source, "model.pth"))
        vocab = read_txt_as_str_list(join(savedir, train_source, "vocab.txt"))

        test_samples = _DATADEF.load_splits_func(holdout_sources,
                                                 ["test"])["test"]
        test_metrics = eval_lexicon_model(
            model,
            _DATADEF,
            test_samples,
            vocab,
            use_lemmatize=False,
            use_source_individual_norm=config["use_source_individual_norm"],
            labelprop_split="test",
        )
        save_json(test_metrics, join(savedir, train_source, "leaf_test.json"))

    save_json(config, join(savedir, "config.json"))

reduce_and_save_metrics(_SAVE_ROOT)
reduce_and_save_metrics(_SAVE_ROOT, "leaf_test.json", "mean_test.json")
Example #3
0
        vocab_size=len(vocab),
    )
    model = get_model(config).to(AUTO_DEVICE)
    model.set_weight_from_lexicon(lexicon_df, _DATADEF.label_names)

    use_source_individual_norm = config["use_source_individual_norm"]
    use_lemmatize = config["use_lemmatize"]

    metrics = {}

    # run validation set
    valid_metrics = eval_lexicon_model(
        model=model,
        datadef=_DATADEF,
        valid_samples=valid_samples,
        vocab=vocab,
        use_source_individual_norm=use_source_individual_norm,
        use_lemmatize=use_lemmatize,
        labelprop_split="train",
    )
    metrics.update(valid_metrics)
    save_json(metrics, join(logdir, "leaf_metrics.json"))
    write_str_list_as_txt(vocab, join(logdir, "vocab.txt"))
    torch.save(model, join(logdir, "model.pth"))

    # run test set
    test_samples = _DATADEF.load_splits_func([holdout_source],
                                             ["test"])["test"]
    test_metrics = eval_lexicon_model(
        model,
        _DATADEF,