Raphael Scheible
Also published as: Raphael Schmitt
2026
SindBERT, the Sailor: Charting the Seas of Turkish NLP
Raphael Schmitt | Stefan Schweter
Proceedings of the Second Workshop Natural Language Processing for Turkic Languages (SIGTURK 2026)
Raphael Schmitt | Stefan Schweter
Proceedings of the Second Workshop Natural Language Processing for Turkic Languages (SIGTURK 2026)
Transformer models have revolutionized NLP, yet many morphologically rich languages remain underrepresented in large-scale pre-training efforts. With SindBERT, we set out to chart the seas of Turkish NLP, providing the first large-scale RoBERTa-based encoder for Turkish. Trained from scratch on 312 GB of Turkish text (mC4, OSCAR23, Wikipedia), SindBERT is released in both base and large configurations, representing the first large-scale encoder-only language model available for Turkish. We evaluate SindBERT on part-of-speech tagging, named entity recognition, offensive language detection, and the TurBLiMP linguistic acceptability benchmark. Our results show that SindBERT performs competitively with existing Turkish and multilingual models, with the large variant achieving the best scores in two of four tasks but showing no consistent scaling advantage overall. This flat scaling trend, also observed for XLM-R and EuroBERT, suggests that current Turkish benchmarks may already be saturated. At the same time, comparisons with smaller but more curated models such as BERTurk highlight that corpus quality and diversity can outweigh sheer data volume. Taken together, SindBERT contributes both as an openly released resource for Turkish NLP and as an empirical case study on the limits of scaling and the central role of corpus composition in morphologically rich languages. The SindBERT models are released under the MIT license and made available in both fairseq and Huggingface formats.
2024
GottBERT: a pure German Language Model
Raphael Scheible | Johann Frei | Fabian Thomczyk | Henry He | Patric Tippmann | Jochen Knaus | Victor Jaravine | Frank Kramer | Martin Boeker
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Raphael Scheible | Johann Frei | Fabian Thomczyk | Henry He | Patric Tippmann | Jochen Knaus | Victor Jaravine | Frank Kramer | Martin Boeker
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Pre-trained language models have significantly advanced natural language processing (NLP), especially with the introduction of BERT and its optimized version, RoBERTa. While initial research focused on English, single-language models can be advantageous compared to multilingual ones in terms of pre-training effort, overall resource efficiency or downstream task performance. Despite the growing popularity of prompt-based LLMs, more compute-efficient BERT-like models remain highly relevant. In this work, we present the first German single-language RoBERTa model, GottBERT, pre-trained exclusively on the German portion of the OSCAR dataset. Additionally, we investigated the impact of filtering the OSCAR corpus. GottBERT was pre-trained using fairseq and standard hyperparameters. We evaluated its performance on two Named Entity Recognition (NER) tasks (Conll 2003 and GermEval 2014) and three text classification tasks (GermEval 2018 fine and coarse, and 10kGNAD) against existing German BERT models and two multilingual models. Performance was measured using the F1 score and accuracy. The GottBERT base and large models showed competitive performance, with GottBERT leading among the base models in 4 of 6 tasks. Contrary to our expectation, the applied filtering did not significantly affect the results. To support the German NLP research community, we are releasing the GottBERT models under the MIT license.