Bluesky Facebook Reddit Email

Ben-Gurion University cyber researcher pioneers method to track groups of anomalous users

01.09.23 | Ben-Gurion University of the Negev

SAMSUNG T9 Portable SSD 2TB

SAMSUNG T9 Portable SSD 2TB transfers large imagery and model outputs quickly between field laptops, lab workstations, and secure archives.

BEER-SHEVA, Israel, January 9, 2023 – Malicious or fictitious users on internet networks have become the bane of the internet's existence. While many bemoan their increasing frequency, few have developed methods to track and expose them. A Ben-Gurion University of the Negev researcher has developed a new method to detect groups of anomalous users.

Their findings were just published in the peer-reviewed journal Neural Processing Letters .

"The advantage of this study is that we can detect anomalous groups of users (such as groups of fake profiles) rather than single users. Uncovering groups of fake profiles is a challenging and less explored task," says Dr. Michael Fire, head of the Data4Good Lab and a member of the Department of Software and Information Systems Engineering.

An anomalous user community might be one that is promoting violent behavior or extremism, one that is spreading fake news, but it could potentially also help locate hot spots during pandemics, the researchers wrote.

One of the advantages of their method, which they named Co-Membership-based Generic Anomalous Communities Detection Algorithm (CMMAC), is that it is not restricted to a single type of network.

"Our method is generic. Therefore, it can potentially work on different types of social media platforms. We tested it on several different types of networks, such as Reddit and Wikipedia (which is also a type of social network)," explains Dr. Fire.

After testing their method on randomly generated networks and real-world networks, they found that it outperformed many other methods in a range of settings.

Their method is better than other methods already out there because "Our method is based solely on network structural properties. That makes our method independent of vertices' attributes (the connections between users online). Thus, it is agnostic to the domain. When comparing our algorithm with other algorithms, it performed better on simulation and real-world data in many cases. It successfully detected groups of anomalous users' communities who presented peculiar online activity," says Dr. Fire.

Additional researchers include Shay Lapid, an MA student, and Dima Kagan, a PhD student, in Dr. Fire's lab.

Neural Processing Letters

10.1007/s11063-022-11103-1

Computational simulation/modeling

People

Co-Membership-based Generic Anomalous Communities Detection

5-Jan-2023

Keywords

Article Information

Contact Information

Ehud Zion Waldoks
Ben-Gurion University of the Negev
ezw@bgu.ac.il

Source

How to Cite This Article

APA:
Ben-Gurion University of the Negev. (2023, January 9). Ben-Gurion University cyber researcher pioneers method to track groups of anomalous users. Brightsurf News. https://www.brightsurf.com/news/L7V7RKD8/ben-gurion-university-cyber-researcher-pioneers-method-to-track-groups-of-anomalous-users.html
MLA:
"Ben-Gurion University cyber researcher pioneers method to track groups of anomalous users." Brightsurf News, Jan. 9 2023, https://www.brightsurf.com/news/L7V7RKD8/ben-gurion-university-cyber-researcher-pioneers-method-to-track-groups-of-anomalous-users.html.