TY - JOUR AU - Torge, Sunna AU - Hahn, Waldemar AU - Manjunath, Lalith AU - Jäkel, René PY - 2022 TI - Named Entity Recognition for Specific Domains - Take Advantage of Transfer Learning JF - International Journal of Information Science and Technology; Vol 6 No 3 (2022) DO - 10.57675/IMIST.PRSM/ijist-v6i3.189 KW - N2 - Automated text analysis as named entity recognition (NER) heavily relies on large amounts of high-quality training data. For domain-specific NER transfer learning approaches aim to overcome the problem of lacking domain-specific training data. In this paper, we investigate transfer learning approaches in order to improve domain-specific NER in low-ressource domains. The first part of the paper is dedicated to information transfer from known to unknown entities using BiLSTM-CRF neural networks, considering also the influence of varying training data size. In the second part instead, pre-trained BERT models are fine-tuned to domain-specific German NER. The performance of models of both architectures is compared w.r.t. different hyperparameters and a set of 16 entities. The experiments are based on the revised German SmartData Corpus, and a baseline model, trained on this corpus. UR - https://innove.org/ijist/index.php/ijist/article/view?path=