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Knowledge-Infused Text Classification for the Biomedical Domain

Knowledge-Infused Text Classification for the Biomedical Domain

Sonika Malik, Sarika Jain
Copyright: © 2022 |Volume: 13 |Issue: 10 |Pages: 15
ISSN: 1947-8186|EISSN: 1947-8194|EISBN13: 9781668472262|DOI: 10.4018/IJISMD.306635
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MLA

Malik, Sonika, and Sarika Jain. "Knowledge-Infused Text Classification for the Biomedical Domain." IJISMD vol.13, no.10 2022: pp.1-15. http://doi.org/10.4018/IJISMD.306635

APA

Malik, S. & Jain, S. (2022). Knowledge-Infused Text Classification for the Biomedical Domain. International Journal of Information System Modeling and Design (IJISMD), 13(10), 1-15. http://doi.org/10.4018/IJISMD.306635

Chicago

Malik, Sonika, and Sarika Jain. "Knowledge-Infused Text Classification for the Biomedical Domain," International Journal of Information System Modeling and Design (IJISMD) 13, no.10: 1-15. http://doi.org/10.4018/IJISMD.306635

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Abstract

Extracting knowledge from unstructured text and then classifying it is gaining importance after the data explosion on the web. The traditional text classification approaches are becoming ubiquitous, but the hybrid of semantic knowledge representation with statistical techniques can be more promising. The developed method attempts to fabricate neural networks to expedite and improve the simulation of ontology-based classification. This paper weighs upon the accurate results between the ontology-based text classification and traditional classification based on the artificial neural network (ANN) using distinguished parameters such as accuracy, precision, etc. The experimental analysis shows that the proposed findings are substantially better than the conventional text classification, taking the course of action into account. The authors also ran tests to compare the results of the proposed research model with one of the latest researches, resulting in a cut above accuracy and F1 score of the proposed model for various experiments performed at the different number of hidden layers and neurons.