Please use this identifier to cite or link to this item: http://repository.kln.ac.lk/handle/123456789/25455
Title: Grammatical Structure Oriented Automated Approach for Surface Knowledge Extraction from Open Domain Unstructured Text
Authors: Tissera, M.
Weerasinghe, R.
Keywords: Automatic Knowledge Extraction, Relation extraction, Natural Language Processing, Semantic Web, Triples Extraction
Issue Date: 2022
Publisher: Journal of Information and Communication Convergence Engineering
Citation: Tissera, M., & Weerasinghe, R. (2022). Grammatical Structure Oriented Automated Approach for Surface Knowledge Extraction from Open Domain Unstructured Text. Journal of Information and Communication Convergence Engineering, 20(2), 113–124. https://doi.org/10.6109/JICCE.2022.20.2.113
Abstract: News in the form of web data generates increasingly large amounts of information as unstructured text. The capability of understanding the meaning of news is limited to humans; thus, it causes information overload. This hinders the effective use of embedded knowledge in such texts. Therefore, Automatic Knowledge Extraction (AKE) has now become an integral part of Semantic web and Natural Language Processing (NLP). Although recent literature shows that AKE has progressed, the results are still behind the expectations. This study proposes a method to auto-extract surface knowledge from English news into a machine-interpretable semantic format (triple). The proposed technique was designed using the grammatical structure of the sentence, and 11 original rules were discovered. The initial experiment extracted triples from the Sri Lankan news corpus, of which 83.5% were meaningful. The experiment was extended to the British Broadcasting Corporation (BBC) news dataset to prove its generic nature. This demonstrated a higher meaningful triple extraction rate of 92.6%. These results were validated using the inter-rater agreement method, which guaranteed the high reliability.
URI: http://repository.kln.ac.lk/handle/123456789/25455
Appears in Collections:Articles



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