Comparative Analysis of Black-Box and White-Box Machine Learning Model in Explainable Phishing Detection

Authors

  • Abdullah Fajar Universitas Telkom
  • Setiadi Yazid Universitas Indonesia
  • Indra Budi Universitas Indonesia

DOI:

https://doi.org/10.35194/mji.v18i1.6501

Keywords:

Black-Box Model, White-Box Model , Phishing Detection, Machine Learning, Comparative Analisys, Explaiability

Abstract

Explainability in phishing detection model can support a further solution of phishing attack mitigation by increasing trust and understanding how phishing can be detected.  The aims of this study to determine and best recommendation to apply an approach which has several components with abilities to fulfil the critical needs A methodology starting with analyzing both black-box and white-box models to get the pros and cons specifically in phishing detection. The conclusion of the analysis will be validated by experiment using a set of well-known algorithms and public phishing datasets. Experimental metrics covers 3 measurements such as predictive accuracy and explainability metrics. Both models are comparable in terms of interpretability and consistency, with room for improvement in diverse datasets. EBM as an example of white-box model is generally better suited for applications requiring explainability and actionable insights. Finally, each model, white-box and black-box model has positive and negative aspects both for performance metric and for explainable metric. It is important to consider the objective of model usage.

Author Biographies

Setiadi Yazid, Universitas Indonesia

  • Affiliation: Universitas Indonesia

  • Verified Email: staff.ui.ac.id

  • Citations: ~723 total

  • h-index: 11

  • i10-index: 18

Main Research Areas
  • Cybersecurity – government cyber hygiene, secure SDLC.

  • Blockchain – scalability, sidechains, P2P lending.

  • Machine Learning – phishing detection, explainable AI.

  • Data Governance – systematic reviews, policy integration.

Selected Recent Works
  • Phishing Detection (2024) – ML models for phishing.

  • Cyber Hygiene (2024) – security practices in government.

  • Explainable AI (2024) – feature importance in phishing detection.

  • Blockchain Scalability (2024) – sidechain strategies.

  • P2P Lending (2023) – blockchain-based lending review.

Indra Budi, Universitas Indonesia

Indra Budi is a Professor at the Faculty of Computer Science, Universitas Indonesia. His academic work centers on information retrieval, text and data mining, sentiment analysis, and financial technology. With more than 5,400 citations and an h-index of 33, his research has had a significant impact both in Indonesia and internationally. He has published extensively on topics such as hate speech detection in Indonesian social media, systematic reviews of fintech adoption and peer-to-peer lending, and the acceptance of hospital information systems. His studies are widely cited, particularly those addressing challenges in financial technology and abusive language detection, which have influenced both academic research and practical applications in policy and industry.

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Published

2026-06-30

How to Cite

Fajar, A., Yazid, S., & Budi, I. (2026). Comparative Analysis of Black-Box and White-Box Machine Learning Model in Explainable Phishing Detection. Media Jurnal Informatika, 18(1), 174–201. https://doi.org/10.35194/mji.v18i1.6501

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