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cleanup
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@ -676,6 +676,19 @@ def debug_data(
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trees_train: Set[str] = gold_train_data["lemmatizer_trees"]
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trees_dev: Set[str] = gold_dev_data["lemmatizer_trees"]
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# This is necessary context if someone is attempting to interpret whether the
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# number of trees exclusively in the dev set is meaningful.
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msg.info(f"{len(trees_train)} lemmatizer trees generated from training data.")
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msg.info(f"{len(trees_dev)} lemmatizer trees generated from dev data.")
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dev_not_train = trees_dev - trees_train
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if len(dev_not_train) != 0:
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msg.warn(
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f"{len(dev_not_train)} lemmatizer trees were found exclusively in the dev data."
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)
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else:
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# Would we ever expect this case? It seems like it would be pretty rare.
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msg.good("All trees in dev data present in training data.")
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if gold_train_data["n_low_cardinality_lemmas"] > 0:
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msg.warn(
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f"{gold_train_data['n_low_cardinality_lemmas']} docs with 1 or 0 unique lemmas."
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@ -683,12 +696,6 @@ def debug_data(
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else:
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msg.good("Training docs have sufficient unique lemmas")
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train_not_dev = trees_train - trees_dev
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if len(train_not_dev) != 0:
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msg.warn(f"{len(train_not_dev)} labels were found only in the train data.")
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else:
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msg.good("Training data contains all lemmatizer trees in dev set.")
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if gold_train_data["n_low_cardinality_lemmas"] > 0:
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msg.warn(
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f"{gold_dev_data['n_low_cardinality_lemmas']} docs with 1 or 0 unique lemmas."
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@ -696,12 +703,6 @@ def debug_data(
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else:
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msg.good("Dev docs have sufficient unique lemmas")
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dev_not_train = trees_dev - trees_train
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if len(dev_not_train) != 0:
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msg.warn(f"{len(dev_not_train)} labels were found only in the dev data.")
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else:
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msg.good("Trees in dev data present in training data.")
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msg.divider("Summary")
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good_counts = msg.counts[MESSAGES.GOOD]
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warn_counts = msg.counts[MESSAGES.WARN]
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@ -906,7 +907,10 @@ def _compile_gold(
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tree_id = trees.add(token.text, token.lemma_)
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tree_str = trees.tree_to_str(tree_id)
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data["lemmatizer_trees"].add(tree_str)
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if len(lemma_set) < 2:
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# We want to identify cases where lemmas aren't assigned
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# or are all assigned the same value, as this would indicate
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# an issue since we're expecting a large set of lemmas
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if len(lemma_set) < 2 and len(gold) > 1:
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data["n_low_cardinality_lemmas"] += 1
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return data
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