Alia Ayoub
Adv. Artif. Intell. Mach. Learn., 6 (1):4908-4924
1. Alia Ayoub: Assistant lecturer at Cairo University
DOI: 10.54364/AAIML.2026.61272
Article History: Received on: 21-Oct-25, Accepted on: 29-Dec-25, Published on: 28-Jan-26
Corresponding Author: Alia Ayoub
Email: a.magdy@fci-cu.edu.eg
Citation: Alia Ayoub, et al. Detecting Fraudulent Communities in Financial Networks Using Hybrid Classification and Ranking Approaches. Advances in Artificial Intelligence and Machine Learning. 2026;6(1):272. https://dx.doi.org/10.54364/AAIML.2026.61272
Suspicious communities refer to
networks or organizations that display untypical behaviors in different fields,
such as in cybersecurity, social networks, and finance. These groups are also
identified by the peculiar patterns of communication, abnormal transaction
rates, and links to established criminal aspects. The well-coordinated and
deviant characteristics of the members, including inconsistent timing and
amount of interaction, are often the indicators of possible fraudulent plots or money laundering. It is important to identify these communities to detect and
intervene in the illegal activities at an early stage. The paper presents a
model of the detection and identification of the suspicious communities
engaging in money-laundering transactions. The proposed framework identifies
the highly suspicious nodes through a classification layer first and then
identifies the suspicious communities around the suspicious nodes using three
different algorithms. The algorithms have various strategies of ranking and
classification to identify suspicious communities. The suggested framework was
tested on two banking datasets, and it was found to be able to find fraudulent
communities with a high level of success.