FabKG: A Knowledge graph of Manufacturing Science domain utilizing
structured and unconventional unstructured knowledge source
- URL: http://arxiv.org/abs/2206.10318v1
- Date: Tue, 24 May 2022 02:32:04 GMT
- Title: FabKG: A Knowledge graph of Manufacturing Science domain utilizing
structured and unconventional unstructured knowledge source
- Authors: Aman Kumar, Akshay G Bharadwaj, Binil Starly, Collin Lynch
- Abstract summary: We develop knowledge graphs based upon entity and relation data for both commercial and educational uses.
We propose a novel crowdsourcing method for KG creation by leveraging student notes.
We have created a knowledge graph containing 65000+ triples using all data sources.
- Score: 1.2597961235465307
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As the demands for large-scale information processing have grown, knowledge
graph-based approaches have gained prominence for representing general and
domain knowledge. The development of such general representations is essential,
particularly in domains such as manufacturing which intelligent processes and
adaptive education can enhance. Despite the continuous accumulation of text in
these domains, the lack of structured data has created information extraction
and knowledge transfer barriers. In this paper, we report on work towards
developing robust knowledge graphs based upon entity and relation data for both
commercial and educational uses. To create the FabKG (Manufacturing knowledge
graph), we have utilized textbook index words, research paper keywords, FabNER
(manufacturing NER), to extract a sub knowledge base contained within Wikidata.
Moreover, we propose a novel crowdsourcing method for KG creation by leveraging
student notes, which contain invaluable information but are not captured as
meaningful information, excluding their use in personal preparation for
learning and written exams. We have created a knowledge graph containing 65000+
triples using all data sources. We have also shown the use case of
domain-specific question answering and expression/formula-based question
answering for educational purposes.
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