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metadata
tags:
  - spacy
  - token-classification
language:
  - da
license: apache-2.0
model-index:
  - name: da_dacy_large_DANSK_ner
    results:
      - task:
          name: NER
          type: token-classification
        metrics:
          - name: NER Precision
            type: precision
            value: 0.8100263852
          - name: NER Recall
            type: recall
            value: 0.8203072812
          - name: NER F Score
            type: f_score
            value: 0.8151344175

DaCy_large_DANSK_ner

DaCy is a Danish language processing framework with state-of-the-art pipelines as well as functionality for analyzing Danish pipelines. At the time of publishing this model, also included in DaCy encorporates the only models for fine-grained NER using DANSK dataset - a dataset containing 18 annotation types in the same format as Ontonotes. Moreover, DaCy's largest pipeline has achieved State-of-the-Art performance on Named entity recognition, part-of-speech tagging and dependency parsing for Danish on the DaNE dataset. Check out the DaCy repository for material on how to use DaCy and reproduce the results. DaCy also contains guides on usage of the package as well as behavioural test for biases and robustness of Danish NLP pipelines.

Feature Description
Name da_dacy_large_DANSK_ner
Version 0.1.0
spaCy >=3.5.0,<3.6.0
Default Pipeline transformer, ner
Components transformer, ner
Vectors 0 keys, 0 unique vectors (0 dimensions)
Sources DANSK - Danish Annotations for NLP Specific TasKs
KennethEnevoldsen/dfm-bert-large-v1-2048bsz-1Msteps (Kenneth Enevoldsen)
License apache-2.0
Author Centre for Humanities Computing Aarhus

Label Scheme

View label scheme (18 labels for 1 components)
Component Labels
ner CARDINAL, DATE, EVENT, FACILITY, GPE, LANGUAGE, LAW, LOCATION, MONEY, NORP, ORDINAL, ORGANIZATION, PERCENT, PERSON, PRODUCT, QUANTITY, TIME, WORK OF ART

Accuracy

Type Score
ENTS_F 81.51
ENTS_P 81.00
ENTS_R 82.03
TRANSFORMER_LOSS 63375.61
NER_LOSS 158164.20

Performance tables

The table below shows the F1, recall and precision of the three DaCy fine-grained models.

Score DaCy large DaCy medium DaCy small
F1 0.823 0.806 0.776
Recall 0.834 0.818 0.77
Precision 0.813 0.794 0.781

The table below shows the F1 of the three DaCy fine-grained models within each named entity type.

Named-entity type DaCy large DaCy medium DaCy small
CARDINAL 0.874 0.781 0.887
DATE 0.846 0.859 0.867
EVENT 0.611 0.571 0.4
FACILITY 0.545 0.533 0.468
GPE 0.893 0.838 0.794
LANGUAGE 0.902 0.486 0.194
LAW 0.686 0.625 0.606
LOCATION 0.633 0.737 0.581
MONEY 0.993 1 0.947
NORP 0.78 0.887 0.785
ORDINAL 0.696 0.7 0.727
ORGANIZATION 0.863 0.851 0.781
PERCENT 0.923 0.96 0.96
PERSON 0.871 0.872 0.833
PRODUCT 0.671 0.635 0.526
QUANTITY 0.386 0.654 0.708
TIME 0.643 0.571 0.71
WORK OF ART 0.494 0.639 0.488

The table below shows the F1 of the three DaCy fine-grained models within each domain of texts in DANSK.

Domain DaCy large DaCy medium DaCy small
All domains combined 0.823 0.806 0.776
Conversation 0.796 0.718 0.82
Dannet 0.75 0.667 1
Legal 0.852 0.854 0.866
News 0.841 0.759 0.86
Social Media 0.793 0.847 0.8
Web 0.826 0.802 0.756
Wiki and Books 0.778 0.838 0.709