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Home/Authors/Mohammad Alkhanafseh

Mohammad Alkhanafseh

4 indexed papers

Recent (6 mo)
4
With code
0
Influential cites
0
Benchmarked
0

Publications per year

4
26

Top categories

Crypto×4ML×4AI×3

Frequent co-authors

Ahmed Sabbah4×
David Mohaisen4×
Mohammed Kharma2×
Radi Jarrar2×
Mohammed F. Kharma1×
Mohammad Hammoudeh1×

Research Timeline

2026
A Quasi-Experimental Developer Study of Security Training in LLM-Assisted Web Application Development

The study found that providing developers with a layer-based security training package significantly reduces the number and severity of security vulnerabilities in LLM-assisted web application development.

Enhancing Reliability in LLM-Based Secure Code Generation

The paper introduces the Mitigation-Aware Chain-of-Thought (MA-CoT) framework, which significantly enhances the security reliability of code generated by LLMs across multiple languages and models.

An Empirical Evaluation of LLM-Generated Code Security Across Prompting Methods

The paper empirically evaluates the security quality of LLM-generated code across various prompting methods, finding that while prompting alters the structure of weaknesses, it is insufficient to reliably reduce overall vulnerability levels.

Concept Drift Adaptation Using Self-Supervised and Reinforcement Learning In Android Malware Detection

The paper proposes a cost-aware, adaptive maintenance framework using Reinforcement Learning (RL) and self-supervised learning to mitigate performance degradation (concept drift) in Android malware detectors without requiring full retraining.

Highlighted terms show continued research focus across papers

Papers

cs.CRcs.AIcs.LGRecentMay 22, 2026

Enhancing Reliability in LLM-Based Secure Code Generation

Mohammed F. Kharma, Mohammad Alkhanafseh, Ahmed Sabbah, David Mohaisen

The paper introduces the Mitigation-Aware Chain-of-Thought (MA-CoT) framework, which significantly enhances the security reliability of code generated by LLMs across multiple languages and models.

View →
cs.CRcs.AIcs.LGRecentMay 22, 2026

An Empirical Evaluation of LLM-Generated Code Security Across Prompting Methods

Mohammed Kharma, Ahmed Sabbah, Mohammad Alkhanafseh, Mohammad Hammoudeh +1 more

The paper empirically evaluates the security quality of LLM-generated code across various prompting methods, finding that while prompting alters the structure of weaknesses, it is insufficient to reli…

View →
cs.CRcs.AIcs.LGRecentMay 22, 2026

Concept Drift Adaptation Using Self-Supervised and Reinforcement Learning In Android Malware Detection

Ahmed Sabbah, Mohammad Kharma, Mohammad Alkhanafseh, Radi Jarrar +2 more

The paper proposes a cost-aware, adaptive maintenance framework using Reinforcement Learning (RL) and self-supervised learning to mitigate performance degradation (concept drift) in Android malware de…

View →
cs.CRcs.LGRecentApr 20, 2026

A Quasi-Experimental Developer Study of Security Training in LLM-Assisted Web Application Development

Mohammed Kharma, Ahmed Sabbah, Radi Jarrar, Samer Zain +2 more

The study found that providing developers with a layer-based security training package significantly reduces the number and severity of security vulnerabilities in LLM-assisted web application develop…

View →