Advanced Malware Detection Techniques

9 researchers across 7 institutions

9 Researchers
7 Institutions
1 Grant PIs
0 High Impact

Researchers in this area develop and refine methods for identifying and analyzing malicious software. This work involves exploring novel approaches to detect zero-day threats, polymorphic malware, and advanced persistent threats that evade traditional security measures. Techniques employed include static and dynamic analysis, machine learning algorithms for pattern recognition, behavioral analysis of program execution, and the application of data mining and topic modeling to understand malware families and their evolution. The focus is on creating more robust and adaptive detection systems capable of operating effectively in complex and evolving threat landscapes.

This research holds particular relevance for Arkansas's growing technology sector, financial institutions, and critical infrastructure, which are increasingly targeted by sophisticated cyberattacks. Protecting these entities safeguards economic stability and public trust. Furthermore, as the state advances in areas like advanced manufacturing and agricultural technology, securing these digital systems becomes paramount to maintaining operational integrity and competitiveness. The development of advanced malware detection techniques contributes to a more secure digital environment for businesses and citizens across Arkansas.

This field draws upon and contributes to related disciplines such as network security, intrusion detection, and the application of advanced neural networks and deep learning. Engagement spans multiple institutions across Arkansas, fostering a broad base of expertise within the state.

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Top Researchers

Name Institution h-index Citations Career Stage Badges
Hai Jiang Arkansas State University 18 990
Bruhadeshwar Bezawada Southern Arkansas University 18 1,227
Jin‐Bum Park Hendrix College 12 1,901
Nur Ahmed University of Arkansas 10 419
Yanjun Pan University of Arkansas 8 176 Grant PI
Sharif Ullah University of Central Arkansas 7 146
Philip Huff UA Little Rock 6 88
Mohammad Nadim University of Arkansas 3 41
Md. Shaba Sayeed Arkansas Tech University 2 17

Cross-Institution Connections

Researchers at different institutions with overlapping expertise in Advanced Malware Detection Techniques.

Bruhadeshwar Bezawada Southern Arkansas University
42%
Mohammad Nadim University of Arkansas
Philip Huff UA Little Rock
36%
Md. Shaba Sayeed Arkansas Tech University
Yanjun Pan University of Arkansas
33%
Jin‐Bum Park Hendrix College
Yanjun Pan University of Arkansas
29%
Md. Shaba Sayeed Arkansas Tech University
Bruhadeshwar Bezawada Southern Arkansas University
29%
Md. Shaba Sayeed Arkansas Tech University
Bruhadeshwar Bezawada Southern Arkansas University
23%
Nur Ahmed University of Arkansas
Hai Jiang Arkansas State University
17%
Md. Shaba Sayeed Arkansas Tech University
Hai Jiang Arkansas State University
16%
Jin‐Bum Park Hendrix College

Researchers with Federal Grants

Browse All 9 Researchers in Directory