4.5 Article

Named-entity recognition in Turkish legal texts

Journal

NATURAL LANGUAGE ENGINEERING
Volume 29, Issue 3, Pages 615-642

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S1351324922000304

Keywords

NLP in law; NER; Turkish NER; Computational law; Named-entity recognition

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Natural language processing (NLP) technologies are increasingly important in legal text processing. This study presents a named-entity recognition (NER) model for Turkish legal texts and explores different word embeddings and character feature extraction techniques. The model achieves a high F1 score of 92.27%, filling the gap in NER research in the Turkish legal domain.
Natural language processing (NLP) technologies and applications in legal text processing are gaining momentum. Being one of the most prominent tasks in NLP, named-entity recognition (NER) can substantiate a great convenience for NLP in law due to the variety of named entities in the legal domain and their accentuated importance in legal documents. However, domain-specific NER models in the legal domain are not well studied. We present a NER model for Turkish legal texts with a custom-made corpus as well as several NER architectures based on conditional random fields and bidirectional long-short-term memories (BiLSTMs) to address the task. We also study several combinations of different word embeddings consisting of GloVe, Morph2Vec, and neural network-based character feature extraction techniques either with BiLSTM or convolutional neural networks. We report 92.27% F1 score with a hybrid word representation of GloVe and Morph2Vec with character-level features extracted with BiLSTM. Being an agglutinative language, the morphological structure of Turkish is also considered. To the best of our knowledge, our work is the first legal domain-specific NER study in Turkish and also the first study for an agglutinative language in the legal domain. Thus, our work can also have implications beyond the Turkish language.

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