IgboNER 2.0 : Expanding Named Entity Recognition Datasets via Projection

Chukwuneke, CI and Rayson, Paul and Ezeani, Ignatius and El-Haj, Mahmoud and Asogwa, Doris and Okpalla, Chidimma and Mbonu, Chinedu (2023) IgboNER 2.0 : Expanding Named Entity Recognition Datasets via Projection. In: AfricaNLP 2023, 2023-05-05 - 2023-05-05, Radisson Blu Hotel and Convention Center. (In Press)

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Abstract

Since the inception of the state-of-the-art neural network models for natural language processing research, the major challenge faced by low-resource languages is the lack or insufficiency of annotated training data. The named entity recognition (NER) task is no exception. The need for an efficient data creation and annotation process, especially for low-resource languages cannot be over-emphasized. In this work, we leverage an existing NER tool for English in a cross-language projection method that automatically creates a mapping dictionary of entities in a source language and their translations in the target language using a parallel English-Igbo corpus. The resultant mapping dictionary, which was manually checked and corrected by human annotators, was used to automatically generate and format an NER training dataset from the Igbo monolingual corpus thereby saving a lot of annotation time for the Igbo NER task. The generated dataset was also included in the training process and our experiments show improved performance results from previous works.

Item Type:
Contribution to Conference (Paper)
Journal or Publication Title:
AfricaNLP 2023 : African NLP in the Era of Large Language Models
ID Code:
194284
Deposited By:
Deposited On:
24 May 2023 08:20
Refereed?:
Yes
Published?:
In Press
Last Modified:
30 Apr 2024 00:25