Warusia Yassin | Cybersecurity and Cryptography | Innovative Research Award

Innovative Research Award

Warusia Yassin
Universiti Teknikal Malaysia Melaka, Malaysia

Warusia Yassin
Affiliation Universiti Teknikal Malaysia Melaka
Country Malaysia
Scopus ID 36912990900
Documents 49
Citations 740
h-index 14
Subject Area Cybersecurity and Cryptography
Event International Forensic Scientist Awards
ORCID 0000-0001-9601-2572

Warusia Yassin is a Malaysian academic researcher recognized for scholarly contributions in cybersecurity, intrusion detection systems, machine learning applications, and network security analytics. Her research portfolio demonstrates a sustained focus on improving intrusion detection methodologies through clustering algorithms, classification models, and hybrid computational techniques.[1] Her work has been indexed in Scopus and cited across cybersecurity literature for its practical relevance in reducing false alarms and improving detection accuracy in digital environments.[2]

Abstract

This article summarizes the academic contributions of Warusia Yassin in the field of cybersecurity and digital forensic intelligence. Her published studies primarily investigate intrusion detection frameworks that integrate machine learning, clustering algorithms, and probabilistic classification techniques. Through publications indexed in Scopus, her work has contributed to the advancement of intelligent cybersecurity monitoring systems and data-driven anomaly detection methodologies.[3]

Keywords

Cybersecurity, Intrusion Detection, Machine Learning, Cryptography, Random Forest, K-Means Clustering, Digital Forensics, Network Security, Hybrid Classification

Introduction

The increasing complexity of cyber threats has intensified the demand for intelligent intrusion detection systems capable of identifying malicious activities with higher precision and lower false alarm rates. Academic researchers in cybersecurity continue to investigate scalable approaches that combine statistical learning, data mining, and behavioral analysis. Within this research context, Warusia Yassin has contributed to the development of hybrid intrusion detection frameworks designed to improve classification accuracy in large-scale digital infrastructures.[4]

Research Profile

Warusia Yassin is affiliated with Universiti Teknikal Malaysia Melaka and has established a publication record focused on cybersecurity analytics and intrusion detection methodologies. Her Scopus profile indicates sustained academic activity, including journal articles and conference proceedings related to digital security technologies. Her research output includes 49 indexed documents with an h-index of 14 and over 740 citations, reflecting scholarly engagement within the cybersecurity research community.[1]

Research Contributions

A significant portion of Yassin’s research has examined the integration of clustering and classification algorithms for intrusion detection optimization. Her studies investigated the use of K-Means clustering combined with Naïve Bayes and OneR classification techniques to improve threat identification performance in network systems.[5] Additional research explored the application of genetic algorithms and random forest classifiers to reduce false positives in anomaly detection environments.[2]

Her conference publications also addressed cloud-based intrusion detection service frameworks, emphasizing scalable cybersecurity infrastructures for modern computing ecosystems. These studies contributed to discussions surrounding adaptive security architectures and automated cyber defense systems.[3]

Publications

  • “Reducing false alarm using hybrid intrusion detection based on x-means clustering and random forest classification” — Journal of Theoretical and Applied Information Technology (2014).
  • “Improving intrusion detection using genetic algorithm” — Information Technology Journal (2013).
  • “A Cloud-based Intrusion Detection Service framework” — CyberSec 2012 Proceedings.
  • “A K-Means and Naive Bayes learning approach for better intrusion detection” — Information Technology Journal (2011).
  • “Intrusion detection based on K-Means clustering and Naïve Bayes classification” — CITA’11 Proceedings.

Research Impact

The research contributions of Warusia Yassin have supported ongoing advancements in cybersecurity analytics and intelligent network defense systems. Her publications demonstrate methodological approaches that combine machine learning algorithms with practical intrusion detection applications. Citation activity associated with her work suggests continued academic relevance in areas connected to cyber threat monitoring, classification accuracy, and adaptive detection systems.[6]

Award Suitability

The International Forensic Scientist Awards recognizes researchers whose work contributes to technological innovation, forensic intelligence, and scientific advancement. Warusia Yassin’s research aligns with these objectives through her scholarly investigations into intrusion detection, cyber defense frameworks, and machine learning-based cybersecurity methodologies. Her publication record and citation metrics reflect measurable academic engagement and interdisciplinary relevance within digital forensic and cybersecurity domains.[1]

Conclusion

Warusia Yassin has contributed to cybersecurity research through studies focused on intelligent intrusion detection systems, hybrid machine learning frameworks, and scalable cyber defense mechanisms. Her work continues to support academic discussions surrounding network security optimization and computational threat analysis. The recognition associated with the Innovative Research Award reflects her documented scholarly contributions within cybersecurity and digital forensic research environments.

References

  1. Elsevier. (n.d.). Scopus author details: Warusia Yassin, Author ID 36912990900. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=36912990900
  2. Yassin, W. (2014). Reducing false alarm using hybrid intrusion detection based on x-means clustering and random forest classification. Journal of Theoretical and Applied Information Technology.
  3. Yassin, W. (2012). A Cloud-based Intrusion Detection Service framework. Proceedings of CyberSec 2012.
    https://doi.org/10.1109/CyberSec.2012.6246098
  4. Yassin, W. (2013). Improving intrusion detection using genetic algorithm. Information Technology Journal.
    https://doi.org/10.3923/itj.2013.2167.2173
  5. Yassin, W. (2011). A K-Means and Naive Bayes learning approach for better intrusion detection. Information Technology Journal.
    https://doi.org/10.3923/itj.2011.648.655
  6. Yassin, W. (2011). Intrusion detection based on K-Means clustering and Naïve Bayes classification. Proceedings of CITA’11.
    https://doi.org/10.1109/CITA.2011.5999520

Subhra Suhaney | Cybersecurity and Cryptography | Forensic Scientist of the Year Award

Dr. Subhra Suhaney | Cybersecurity and Cryptography | Forensic Scientist of the Year Award

Institute for Excellence in Higher Education Bhopal | India

Dr. Subhra Suhaney is a dedicated forensic science researcher whose work spans analytical toxicology, advanced chromatographic method development, digital forensics, and technology-driven innovations in forensic education. Her research is prominently recognized for pioneering contributions in the detection, separation, and quantification of stupefacient and psychoactive compounds in foodstuffs and beverages an area of critical importance to forensic toxicology, criminal investigations, and public safety. She has significantly advanced the application of Micellar Liquid Chromatography (MLC), establishing it as an eco-friendly, cost-effective, and analytically robust alternative to conventional TLC and HPLC for benzodiazepines and other psychoactive substances. Her publications in respected journals such as the Journal of AOAC International, Journal of Liquid Chromatography & Related Technologies, E-Journal of Chemistry, and the Journal of the Indian Chemical Society demonstrate strong methodological precision and practical forensic relevance. Dr. Subhra Suhaney’s scholarly outputs include validated multi-analyte detection protocols, rapid screening techniques for ketamine-based adulteration, and improved chromatographic systems that enhance the reliability and evidentiary value of forensic analyses. Beyond chemical forensics, she contributes to the fields of digital forensics, AI-based data privacy concerns, and ICT-enabled learning, reflecting an interdisciplinary approach aligned with modern forensic challenges. She has actively presented her work in national conferences, participated in academic workshops, and developed quality e-content in fingerprint science to strengthen forensic pedagogy. According to Google Scholar, she has over six research publications with 15 citations, an h-index of 3, underscoring the scholarly impact and growing recognition of her research contributions.

Profile: Google Scholar

Featured Publications

1. Subhra, H., Devasish, B., Josep, E. R., & Abhilasha, D. (2012). Micellar liquid chromatography for the determination of some less prescribed benzodiazepines. Journal of Chemistry, 9(1), 443–450.

2. Subhra, H., Prakash, D. N., Abhilasha, D., Josep, E. R., & Devasish, B. (2014). Simultaneous determination of psychoactive compounds in foodstuffs using micellar liquid chromatography with direct injection. Journal of AOAC International, 97(2), 409–414.

3. Hoonka, S., Durgbanshi, A., Esteve-Romero, J., Dubey, N. P., & Bose, D. (2014). Simultaneous determination of three stupefacients in foodstuff using high-performance liquid chromatography. Journal of Liquid Chromatography & Related Technologies, 37(9), 1287–1297.

4. Hoonka, S., Dubey, N. P., Esteve-Romero, J., Durgbanshi, A., & Bose, D. (2013). Rapid screening of ketamine in confiscated orange juice by thin layer chromatography. Journal of the Indian Chemical Society, 90(4), 513–517.

5. Suhaney, S. (2025). Breach of users’ personal data by artificial intelligence. International Journal of All Research Education and Scientific Methods.