Javascript must be enabled to continue!
Relation Extraction (RE) Model for Afaan Oromo Text Using Self-Attention Mechanisms
View through CrossRef
Abstract
This study proposes a novel Relation Extraction (RE) model for Afaan Oromo, focusing on automatically identifying semantic relationships between entities in text. The model leverages multilingual BERT (mBERT) embeddings combined with entity pair features, including sentence-level distances and lexical similarity, to capture both local and global context. Each entity pair is processed through a self-attention encoder, followed by pooling and a fully connected classification layer, predicting one of 15 predefined relation classes, such as Person-Location, Person-Organization, and Organization-Date. The model was trained and evaluated on a dataset of 10,000 annotated Afaan Oromo sentences, covering diverse domains including educational, administrative, and cultural texts. Experimental results demonstrate high performance across all 15 relation classes, achieving an overall accuracy of 96.3%, precision of 95.8%, recall of 96.1%, and an F1-score of 95.9%. The confusion matrix shows strong diagonal dominance, confirming precise class discrimination. This approach effectively addresses challenges in low-resource languages, such as limited corpora and complex morphology, while providing a robust framework for downstream natural language processing applications, including question answering, knowledge graph construction, and information retrieval. The proposed system demonstrates state-of-the-art results for Afaan Oromo text and can be adapted to other low-resource languages with similar linguistic characteristics.
Title: Relation Extraction (RE) Model for Afaan Oromo Text Using Self-Attention Mechanisms
Description:
Abstract
This study proposes a novel Relation Extraction (RE) model for Afaan Oromo, focusing on automatically identifying semantic relationships between entities in text.
The model leverages multilingual BERT (mBERT) embeddings combined with entity pair features, including sentence-level distances and lexical similarity, to capture both local and global context.
Each entity pair is processed through a self-attention encoder, followed by pooling and a fully connected classification layer, predicting one of 15 predefined relation classes, such as Person-Location, Person-Organization, and Organization-Date.
The model was trained and evaluated on a dataset of 10,000 annotated Afaan Oromo sentences, covering diverse domains including educational, administrative, and cultural texts.
Experimental results demonstrate high performance across all 15 relation classes, achieving an overall accuracy of 96.
3%, precision of 95.
8%, recall of 96.
1%, and an F1-score of 95.
9%.
The confusion matrix shows strong diagonal dominance, confirming precise class discrimination.
This approach effectively addresses challenges in low-resource languages, such as limited corpora and complex morphology, while providing a robust framework for downstream natural language processing applications, including question answering, knowledge graph construction, and information retrieval.
The proposed system demonstrates state-of-the-art results for Afaan Oromo text and can be adapted to other low-resource languages with similar linguistic characteristics.
Related Results
Afaan Oromo Multi-Label News Text Classification Using Deep Learning Approach
Afaan Oromo Multi-Label News Text Classification Using Deep Learning Approach
Abstract
Classification is a technique for categorizing textual data into a form of predefined categories. Due to its major consequences in regard to critical tasks such as...
The Oromo national memories
The Oromo national memories
The author defines nation as a territorial community of nativity and attributes significance to the biological fact of birth into the historically evolving territorial structure of...
Generational Wisdom: Lesson from the Oromo People
Generational Wisdom: Lesson from the Oromo People
This review explores the foundational elements of Oromo generational wisdom, focusing on how their rich cultural heritage, particularly the Gadaa system, is passed down through gen...
Afaan Oromo News Text Classification Using Deep Learning
Afaan Oromo News Text Classification Using Deep Learning
Abstract
The recent development of the internet has significantly increased the availability and accessibility of Afaan Oromo texts online. Along...
The morphosyntactic integration of English words into Afaan Oromoo
The morphosyntactic integration of English words into Afaan Oromoo
The present study investigates the morphosyntactic integration of English lexical items into Afaan Oromoo within multilingual conversations recorded in Dambi Dollo, Oromia regional...
Is a Fitbit a Diary? Self-Tracking and Autobiography
Is a Fitbit a Diary? Self-Tracking and Autobiography
Data becomes something of a mirror in which people see themselves reflected. (Sorapure 270)In a 2014 essay for The New Yorker, the humourist David Sedaris recounts an obsession spu...
Sleep Habits and Occurrence of Lowback Pain among Craftsmen
Sleep Habits and Occurrence of Lowback Pain among Craftsmen
<span style="color: #000000; font-family: Verdana, Arial, Helvetica, sans-serif; font-size: 10px; font-style: normal; font-variant-ligatures: normal; font-variant-caps: normal; ...
Sleep Habits and Occurrence of Lowback Pain among Craftsmen
Sleep Habits and Occurrence of Lowback Pain among Craftsmen
<span style="color: #000000; font-family: Verdana, Arial, Helvetica, sans-serif; font-size: 10px; font-style: normal; font-variant-ligatures: normal; font-variant-caps: normal; ...

