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Main Authors: Ramalepe, Simon P., Modipa, Thipe I., Davel, Marelie H.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.15281
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author Ramalepe, Simon P.
Modipa, Thipe I.
Davel, Marelie H.
author_facet Ramalepe, Simon P.
Modipa, Thipe I.
Davel, Marelie H.
contents Due to the scarcity of data in low-resourced languages, the development of language models for these languages has been very slow. Currently, pre-trained language models have gained popularity in natural language processing, especially, in developing domain-specific models for low-resourced languages. In this study, we experiment with the impact of using occlusion-based techniques when training a language model for a text generation task. We curate 2 new datasets, the Sepedi monolingual (SepMono) dataset from several South African resources and the Sepedi radio news (SepNews) dataset from the radio news domain. We use the SepMono dataset to pre-train transformer-based models using the occlusion and non-occlusion pre-training techniques and compare performance. The SepNews dataset is specifically used for fine-tuning. Our results show that the non-occlusion models perform better compared to the occlusion-based models when measuring validation loss and perplexity. However, analysis of the generated text using the BLEU score metric, which measures the quality of the generated text, shows a slightly higher BLEU score for the occlusion-based models compared to the non-occlusion models.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15281
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Pre-training a Transformer-Based Generative Model Using a Small Sepedi Dataset
Ramalepe, Simon P.
Modipa, Thipe I.
Davel, Marelie H.
Computation and Language
Artificial Intelligence
Machine Learning
Due to the scarcity of data in low-resourced languages, the development of language models for these languages has been very slow. Currently, pre-trained language models have gained popularity in natural language processing, especially, in developing domain-specific models for low-resourced languages. In this study, we experiment with the impact of using occlusion-based techniques when training a language model for a text generation task. We curate 2 new datasets, the Sepedi monolingual (SepMono) dataset from several South African resources and the Sepedi radio news (SepNews) dataset from the radio news domain. We use the SepMono dataset to pre-train transformer-based models using the occlusion and non-occlusion pre-training techniques and compare performance. The SepNews dataset is specifically used for fine-tuning. Our results show that the non-occlusion models perform better compared to the occlusion-based models when measuring validation loss and perplexity. However, analysis of the generated text using the BLEU score metric, which measures the quality of the generated text, shows a slightly higher BLEU score for the occlusion-based models compared to the non-occlusion models.
title Pre-training a Transformer-Based Generative Model Using a Small Sepedi Dataset
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2501.15281