An Adaptive and Scalable Ontology for Explainable Deep Classifier in Disease Surveillance

Authors

  • Kamal Bakari Jillahi
  • Aamo Iorliam
  • Gabriel Mshelia Mwajim
  • Shuaibu Anas

Keywords:

Evolving knowledge graphs, White-box AI, Semantic network, Ethical AI, Clarity, Public Health Surveillance

Abstract

This research aims to improve explainability of predictions in disease surveillance by leveraging an ontology-based model. A Markov Decision Process (MDP) and a Q-Learning algorithms were proposed to update two public Ontologies making them both dynamic and Scalable in order to enhance the quality of explanations generated on the output of a deep learning classifier used for Morbidity/Mortality prediction of Malaria disease. The study uses Atlas Malaria dataset, OBO Malaria Ontology, SWEET Ontology and a Recurrent Neural Network thus, integrating domain-specific knowledge and data. The study compares the proposed model with a static model based on fidelity, interpretability, relevance, ROC and AUC metrics. The proposed model achieves a fidelity score of 0.92, compared to 0.75 for the static model, along with a higher interpretability score of 4.7/5 versus 3.9/5 for the static approach. Additionally, the relevance score for the dynamic ontology is 0.88, outperforming the static model’s 0.72. The dynamic ontology also exhibits superior classification performance, with an AUC of 0.9532, significantly higher than the static model’s AUC of 0.7968. These results demonstrate the dynamic ontology’s effectiveness in improving both model performance and explanation quality in case studied.

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Published

11/09/2024

How to Cite

An Adaptive and Scalable Ontology for Explainable Deep Classifier in Disease Surveillance. (2024). AUN INTERNATIONAL CONFERENCE, 2(1), 254-261. https://journals.aun.edu.ng/index.php/files/article/view/87

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