Framework of computational intelligence-enhanced knowledge base construction: Methodology and a case of gene-related cardiovascular disease

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Abstract

Knowledge base construction (KBC) aims to populate knowledge bases with high-quality information from unstructured data but how to effectively conduct KBC from scientific documents with limited preknowledge is still elusive. This paper proposes a KBC framework by applying computational intelligent techniques through the integration of intelligent bibliometrics—e.g., co-occurrence analysis is used for profiling research topics/domains and identifying key players, and recommending potential collaborators based on the incorporation of a link prediction approach; an approach of scientific evolutionary pathways is exploited to trace the evolution of research topics; and a search engine incorporating with fuzzy logics, word embedding, and genetic algorithm is developed for knowledge searching and ranking. Aiming to examine and demonstrate the reliability of the proposed framework, a case of gene-related cardiovascular diseases is selected, and a knowledge base is constructed, with the validation of domain experts.

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Zhang, Y., Wu, M., Lin, H., Tipper, S., Grosser, M., Zhang, G., & Lu, J. (2020). Framework of computational intelligence-enhanced knowledge base construction: Methodology and a case of gene-related cardiovascular disease. International Journal of Computational Intelligence Systems, 13(1), 1109–1119. https://doi.org/10.2991/ijcis.d.200728.001

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