--- license: cc-by-sa-4.0 language: - de tags: - ner - named-entity-recognition - xlm-roberta - token-classification - sdvm datasets: - SDVM/xtreme-PAN-X.de metrics: - f1 pipeline_tag: token-classification model-index: - name: multilingual-ner-original results: - task: type: token-classification name: Named Entity Recognition dataset: type: SDVM/xtreme-PAN-X.de name: PAN-X.de (Original) config: default split: test metrics: - type: f1 name: F1 value: 0.880 --- # SDVM Multilingual NER — Original An XLM-RoBERTa-base model fine-tuned for Named Entity Recognition on the **original** (unrefined) PAN-X.de dataset from the XTREME benchmark. This model is part of a paired experiment by [SDVM](https://huggingface.co/SDVM) to demonstrate the impact of data quality on NER performance. Compare with [SDVM/multilingual-ner-refined](https://huggingface.co/SDVM/multilingual-ner-refined), which was trained on cleaned data. ## Training Details - **Base model**: [xlm-roberta-base](https://huggingface.co/xlm-roberta-base) - **Dataset**: [SDVM/xtreme-PAN-X.de](https://huggingface.co/datasets/SDVM/xtreme-PAN-X.de) — `tokens` and `ner_tags` columns (original, uncleaned) - **Training**: 3 epochs, batch size 8, learning rate 2e-5, weight decay 0.01 - **Task**: Token classification with IOB2 tags ## Labels | ID | Tag | |----|-----| | 0 | O | | 1 | B-PER | | 2 | I-PER | | 3 | B-ORG | | 4 | I-ORG | | 5 | B-LOC | | 6 | I-LOC | ## Usage ```python from transformers import pipeline ner = pipeline("token-classification", model="SDVM/multilingual-ner-original") result = ner("Angela Merkel wurde in Hamburg geboren.") print(result) ``` ## Context This model was trained on the original PAN-X.de data which contains ~8.5% Wikipedia markup noise tokens (bold markers, quote marks, redirect tags, etc.). These artifacts can confuse the model during both training and inference. For a cleaner alternative, see [SDVM/multilingual-ner-refined](https://huggingface.co/SDVM/multilingual-ner-refined). ## Reference - Based on Chapter 4 of [Natural Language Processing with Transformers](https://github.com/nlp-with-transformers/notebooks/blob/main/04_multilingual-ner.ipynb) - Part of the [SDVM](https://huggingface.co/SDVM) data quality demonstration series