2000 character limit reached
Data Centric Domain Adaptation for Historical Text with OCR Errors (2107.00927v1)
Published 2 Jul 2021 in cs.CL and cs.LG
Abstract: We propose new methods for in-domain and cross-domain Named Entity Recognition (NER) on historical data for Dutch and French. For the cross-domain case, we address domain shift by integrating unsupervised in-domain data via contextualized string embeddings; and OCR errors by injecting synthetic OCR errors into the source domain and address data centric domain adaptation. We propose a general approach to imitate OCR errors in arbitrary input data. Our cross-domain as well as our in-domain results outperform several strong baselines and establish state-of-the-art results. We publish preprocessed versions of the French and Dutch Europeana NER corpora.
- Luisa März (5 papers)
- Stefan Schweter (7 papers)
- Nina Poerner (9 papers)
- Benjamin Roth (48 papers)
- Hinrich Schütze (250 papers)