--- language: es license: gpl-3.0 tags: - spacy - token-classification widget: - text: "Fue antes de llegar a Sigüeiro, en el Camino de Santiago." - text: "El proyecto lo financia el Ministerio de Industria y Competitividad." model-index: - name: es_spacy_ner_cds results: - task: name: NER type: token-classification metrics: - name: NER Precision type: precision value: 0.9648998822 - name: NER Recall type: recall value: 0.9603751465 - name: NER F Score type: f_score value: 0.9626321974 --- # Introduction spaCy NER model for Spanish trained with interviews in the domain of tourism related to the Way of Saint Jacques. It recognizes four types of entities: location (LOC), organizations (ORG), person (PER) and miscellaneous (MISC). | Feature | Description | | --- | --- | | **Name** | `es_spacy_ner_cds` | | **Version** | `0.0.1a` | | **spaCy** | `>=3.4.3,<3.5.0` | | **Default Pipeline** | `tok2vec`, `ner` | | **Components** | `tok2vec`, `ner` | ### Label Scheme
View label scheme (4 labels for 1 components) | Component | Labels | | --- | --- | | **`ner`** | `LOC`, `MISC`, `ORG`, `PER` |
## Usage You can use this model with the spaCy *pipeline* for NER. ```python import spacy from spacy.pipeline import merge_entities nlp = spacy.load("es_spacy_ner_cds") nlp.add_pipe('sentencizer') example = "Fue antes de llegar a Sigüeiro, en el Camino de Santiago. El proyecto lo financia el Ministerio de Industria y Competitividad." ner_pipe = nlp(example) print(ner_pipe.ents) for token in merge_entities(ner_pipe): print(token.text, token.ent_type_) ``` ## Dataset ToDo ### Accuracy | Type | Score | | --- | --- | | `ENTS_F` | 96.26 | | `ENTS_P` | 96.49 | | `ENTS_R` | 96.04 | | `TOK2VEC_LOSS` | 62780.17 | | `NER_LOSS` | 34006.41 |