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  • DARIAH EU
  • 2017-2021
  • QA

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  • Publication . Article . Preprint . Conference object . 2019
    Open Access
    Authors: 
    Lilia Simeonova; Kiril Simov; Petya Osenova; Preslav Nakov;
    Publisher: Incoma Ltd., Shoumen, Bulgaria

    We propose a morphologically informed model for named entity recognition, which is based on LSTM-CRF architecture and combines word embeddings, Bi-LSTM character embeddings, part-of-speech (POS) tags, and morphological information. While previous work has focused on learning from raw word input, using word and character embeddings only, we show that for morphologically rich languages, such as Bulgarian, access to POS information contributes more to the performance gains than the detailed morphological information. Thus, we show that named entity recognition needs only coarse-grained POS tags, but at the same time it can benefit from simultaneously using some POS information of different granularity. Our evaluation results over a standard dataset show sizable improvements over the state-of-the-art for Bulgarian NER. Comment: named entity recognition; Bulgarian NER; morphology; morpho-syntax

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The following results are related to DARIAH EU. Are you interested to view more results? Visit OpenAIRE - Explore.
1 Research products, page 1 of 1
  • Publication . Article . Preprint . Conference object . 2019
    Open Access
    Authors: 
    Lilia Simeonova; Kiril Simov; Petya Osenova; Preslav Nakov;
    Publisher: Incoma Ltd., Shoumen, Bulgaria

    We propose a morphologically informed model for named entity recognition, which is based on LSTM-CRF architecture and combines word embeddings, Bi-LSTM character embeddings, part-of-speech (POS) tags, and morphological information. While previous work has focused on learning from raw word input, using word and character embeddings only, we show that for morphologically rich languages, such as Bulgarian, access to POS information contributes more to the performance gains than the detailed morphological information. Thus, we show that named entity recognition needs only coarse-grained POS tags, but at the same time it can benefit from simultaneously using some POS information of different granularity. Our evaluation results over a standard dataset show sizable improvements over the state-of-the-art for Bulgarian NER. Comment: named entity recognition; Bulgarian NER; morphology; morpho-syntax

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