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Talk: Tensor Decomposition for Cybersecurity, 12-1pm ET 3/29

Extracting hidden patterns from cybersecurity datasets

The UMBC Cyber Defense Lab presents

Tensor Decomposition Methods for Cybersecurity


Maksim E. Eren
Los Alamos National Laboratory

12–1pm ET, Friday, March 29, 2024, via WebEx

Tensor decomposition is a powerful unsupervised machine learning method used to extract hidden patterns from large datasets. This presentation aims to illuminate the extensive applications and capabilities of tensors within the realm of cybersecurity. We offer a comprehensive overview by encapsulating a diverse array of capabilities, showcasing the cutting-edge employment of tensors in the detection of network and power grid anomalies, identification of SPAM e-mails, mitigation of credit card fraud, and detection of malware. Additionally, we delve into the utility of tensors for classifying malware families, pinpointing novel forms of malware, analyzing user behavior, and utilizing tensors for data privacy through federated learning techniques.

Maksim E. Eren is an early career scientist in A-4, Los Alamos National Laboratory (LANL) Advance Research in Cyber Systems division. He graduated Summa Cum Laude with a Computer Science Bachelor’s at University of Maryland Baltimore County (UMBC) in 2020 and Master’s in 2022. He is currently pursuing his Ph.D. in the UMBC DREAM Lab, and he is a Scholarship for Service CyberCorps alumnus. His interdisciplinary research interests lie at the intersection of machine learning and cybersecurity, with a concentration in tensor decomposition. His tensor decomposition-based research projects include large-scale malware detection and characterization, cyber anomaly detection, data privacy, text mining, knowledge graphs, and high-performance computing. Maksim has developed and published state-of-the-art solutions in anomaly detection and malware characterization. He has also worked on various other machine learning research projects such as detecting malicious hidden code, adversarial analysis of malware classifiers, and federated learning. At LANL, Maksim was a member of the 2021 R&D 100 winning project SmartTensors, where he has released a fast tensor decomposition and anomaly detection software, contributed to the design and development of various other tensor decomposition libraries, and developed state-of-the-art text mining tools. Maksim is currently the lead for the Cyber Science Research Program (CSRP), a cybersecurity research internship at LANL.
 
Support for this event was provided in part by the National Science Foundation under SFS grant DGE-1753681.


 

 


 

 

Posted: March 27, 2024, 3:27 PM