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Main Authors: Wanjawa, Barack Wamkaya, Muchemi, Lawrence, Miriti, Evans
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.09326
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author Wanjawa, Barack Wamkaya
Muchemi, Lawrence
Miriti, Evans
author_facet Wanjawa, Barack Wamkaya
Muchemi, Lawrence
Miriti, Evans
contents Processing low-resource languages, such as Kiswahili, using machine learning is difficult due to lack of adequate training data. However, such low-resource languages are still important for human communication and are already in daily use and users need practical machine processing tasks such as summarization, disambiguation and even question answering (QA). One method of processing such languages, while bypassing the need for training data, is the use semantic networks. Some low resource languages, such as Kiswahili, are of the subject-verb-object (SVO) structure, and similarly semantic networks are a triple of subject-predicate-object, hence SVO parts of speech tags can map into a semantic network triple. An algorithm to process raw natural language text and map it into a semantic network is therefore necessary and desirable in structuring low resource languages texts. This algorithm tested on the Kiswahili QA task with upto 78.6% exact match.
format Preprint
id arxiv_https___arxiv_org_abs_2501_09326
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Algorithm for Semantic Network Generation from Texts of Low Resource Languages Such as Kiswahili
Wanjawa, Barack Wamkaya
Muchemi, Lawrence
Miriti, Evans
Computation and Language
I.2.7
Processing low-resource languages, such as Kiswahili, using machine learning is difficult due to lack of adequate training data. However, such low-resource languages are still important for human communication and are already in daily use and users need practical machine processing tasks such as summarization, disambiguation and even question answering (QA). One method of processing such languages, while bypassing the need for training data, is the use semantic networks. Some low resource languages, such as Kiswahili, are of the subject-verb-object (SVO) structure, and similarly semantic networks are a triple of subject-predicate-object, hence SVO parts of speech tags can map into a semantic network triple. An algorithm to process raw natural language text and map it into a semantic network is therefore necessary and desirable in structuring low resource languages texts. This algorithm tested on the Kiswahili QA task with upto 78.6% exact match.
title Algorithm for Semantic Network Generation from Texts of Low Resource Languages Such as Kiswahili
topic Computation and Language
I.2.7
url https://arxiv.org/abs/2501.09326