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Main Authors: Mohamed, Naira Abdou, Erraji, Zakarya, Bahafid, Abdessalam, Benelallam, Imade
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.12143
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author Mohamed, Naira Abdou
Erraji, Zakarya
Bahafid, Abdessalam
Benelallam, Imade
author_facet Mohamed, Naira Abdou
Erraji, Zakarya
Bahafid, Abdessalam
Benelallam, Imade
contents If today some African languages like Swahili have enough resources to develop high-performing Natural Language Processing (NLP) systems, many other languages spoken on the continent are still lacking such support. For these languages, still in their infancy, several possibilities exist to address this critical lack of data. Among them is Transfer Learning, which allows low-resource languages to benefit from the good representation of other languages that are similar to them. In this work, we adopt a similar approach, aiming to pioneer NLP technologies for Comorian, a group of four languages or dialects belonging to the Bantu family. Our approach is initially motivated by the hypothesis that if a human can understand a different language from their native language with little or no effort, it would be entirely possible to model this process on a machine. To achieve this, we consider ways to construct Comorian datasets mixed with Swahili. One thing to note here is that in terms of Swahili data, we only focus on elements that are closest to Comorian by calculating lexical distances between candidate and source data. We empirically test this hypothesis in two use cases: Automatic Speech Recognition (ASR) and Machine Translation (MT). Our MT model achieved ROUGE-1, ROUGE-2, and ROUGE-L scores of 0.6826, 0.42, and 0.6532, respectively, while our ASR system recorded a WER of 39.50\% and a CER of 13.76\%. This research is crucial for advancing NLP in underrepresented languages, with potential to preserve and promote Comorian linguistic heritage in the digital age.
format Preprint
id arxiv_https___arxiv_org_abs_2412_12143
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Harnessing Transfer Learning from Swahili: Advancing Solutions for Comorian Dialects
Mohamed, Naira Abdou
Erraji, Zakarya
Bahafid, Abdessalam
Benelallam, Imade
Computation and Language
Artificial Intelligence
Machine Learning
If today some African languages like Swahili have enough resources to develop high-performing Natural Language Processing (NLP) systems, many other languages spoken on the continent are still lacking such support. For these languages, still in their infancy, several possibilities exist to address this critical lack of data. Among them is Transfer Learning, which allows low-resource languages to benefit from the good representation of other languages that are similar to them. In this work, we adopt a similar approach, aiming to pioneer NLP technologies for Comorian, a group of four languages or dialects belonging to the Bantu family. Our approach is initially motivated by the hypothesis that if a human can understand a different language from their native language with little or no effort, it would be entirely possible to model this process on a machine. To achieve this, we consider ways to construct Comorian datasets mixed with Swahili. One thing to note here is that in terms of Swahili data, we only focus on elements that are closest to Comorian by calculating lexical distances between candidate and source data. We empirically test this hypothesis in two use cases: Automatic Speech Recognition (ASR) and Machine Translation (MT). Our MT model achieved ROUGE-1, ROUGE-2, and ROUGE-L scores of 0.6826, 0.42, and 0.6532, respectively, while our ASR system recorded a WER of 39.50\% and a CER of 13.76\%. This research is crucial for advancing NLP in underrepresented languages, with potential to preserve and promote Comorian linguistic heritage in the digital age.
title Harnessing Transfer Learning from Swahili: Advancing Solutions for Comorian Dialects
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2412.12143