Hussamedin Mohamed’s scientific contributions

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Publications (1)


Fig. 1. CFCA 2015 survey, Top 3 fraud losses globally 
Fig. 2. The legitimate route of international call 
Fig. 3. The bypass fraud route of international call 
Fig. 4. A SIMbox and its components IV. BATTLING BYPASS FRAUD 
Bypass Fraud Detection: Artificial Intelligence Approach
  • Article
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November 2017

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6,307 Reads

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6 Citations

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Hussamedin Mohamed

Telecom companies are severely damaged by bypass fraud or SIM boxing. However, there is a shortage of published research to tackle this problem. The traditional method of Test Call Generating is easily overcome by fraudsters and the need for more sophisticated ways is inevitable. In this work, we are developing intelligent algorithms that mine a huge amount of mobile operator's data and detect the SIMs that are used to bypass international calls. This method will make it hard for fraudsters to generate revenue and hinder their work. Also by reducing fraudulent activities, quality of service can be increased as well as customer satisfaction. Our technique has been evaluated and tested on real world mobile operator data, and proved to be very efficient.

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Citations (1)


... It is when a fraudster makes an agreement with a local carrier in high cost destination to share profit for increasing traffic. The fraudster then gains unauthorized access to any organization's public branch exchange (PBX) and uses it to make calls (Ighneiwa and Mohamed 2017). The cost of making international phone calls is a significant driver of telecommunications fraud. ...

Reference:

A Novel Ensemble-based Machine Learning Model for Anomaly Detection in CDRs to Identify International Revenue Share Fraud
Bypass Fraud Detection: Artificial Intelligence Approach