Papers by Eva Pettersson

2 papers
An Evaluation of Neural Machine Translation Models on Historical Spelling Normalization (C18-1)

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Challenge: In this paper, we apply different NMT models to the problem of historical spelling normalization for five languages . we find that NMT model is much better than SMT in terms of character error rate .
Approach: They propose to use NMT models to solve the problem of historical spelling normalization in five languages.
Outcome: The proposed method improves historical spelling normalization for five languages.
Czech Historical Named Entity Corpus v 1.0 (2020.lrec-1)

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Challenge: a lack of annotated historical data for named entity recognition is an obstacle to research in this area.
Approach: They propose to create an annotated corpus for named entity recognition in historical documents . they define domain-specific named entity types and create an annotation manual .
Outcome: The proposed corpus is available for research and is available to download . it is the first annotated historical corpus for named entity recognition (NER)

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