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International Revenue Share Fraud Prevention: Early Warning Strategies - Neural Technologies
Neural Technologies6 min read

International Revenue Share Fraud Prevention: Early Warning Strategies

IRSF Fraud: An Emerging Threat in Telecom and Digital Communications

International Revenue Share Fraud (IRSF) has been a persistent issue in the telecom and digital communication sectors for decades, which include mobile virtual network operators (MVNOs), internet service providers (ISPs), digital calling platforms and more. It exploits vulnerabilities in telecommunications networks, artificially inflating traffic to premium-rate numbers (IPRNs) often without the knowledge of consumers or businesses. Fraudsters typically manipulate call routing systems, hijack legitimate telecom services, or use SIM box devices to redirect international calls to high-cost numbers, generating illicit revenue. 

However, its methods, scale, and impact have evolved dramatically over time, adapting to changes in technology, telecom infrastructure, and the global digital economy. As businesses and services migrated to the cloud, new vulnerabilities emerged. Cloud-based communications and virtual numbers provided fraudsters with more opportunities to launch IRSF fraud campaigns on a massive scale. Virtual numbers—often used in cloud-based phone systems, VoIP services, and digital marketing platforms—became a target for fraudsters who could easily redirect calls or texts to premium-rate numbers.

The rise of One-Time Passwords, OTP-based authentication is a double-edged sword for IRSF fraud prevention. On the one hand, OTPs provide an additional layer of security that makes it harder for fraudsters to gain unauthorized access to accounts and services. However, when OTP systems are compromised through methods like SIM swapping, SMS interception, malware or phishing attacks, they can inadvertently increase the vulnerability of digital services to IRSF fraud.

Additionally, geographical targeting has become a major trend, with fraudsters exploiting specific regions where telecom providers have weaker fraud prevention measures or lower call rates. They can now route large volumes of fraudulent international calls, often targeting regions with high premium-rate numbers or weakly defended networks.

How Are International Revenue Share Fraud (IRSF) Attacks Carried Out?

International Revenue Share Fraud (IRSF) employs various schemes to exploit telecommunications, MVNO and digital services. Below are the most prevalent attack methods used by fraudsters:

Attack Methods

Description

Technologies/Tactics Used

Wangiri Fraud

Fraudsters make short calls, prompting recipients to call back to premium rate numbers.

Automated dialers, premium international numbers

PBX Hacking

Unauthorized access to business phone systems to make calls to high-cost destinations.

Exploiting vulnerabilities in PBX systems, weak credentials, malware

SIM Box Fraud

Using devices with multiple SIM cards to bypass international call charges and redirect calls to premium numbers.

SIM box gateways, multiple SIM cards

False Answer Supervision

Called party's network falsely indicates a call has been answered, triggering charges even if unanswered.

Manipulation of telecommunications signaling protocols

Subscription Fraud

Fraudulently signing up for premium services using stolen or fake identities.

Stolen or fake personal information, automated sign-up processes

International Revenue Share Abuse

Artificially inflating call volume to high-cost international destinations with generous revenue-sharing agreements.

Automated dialers, compromised devices, exploiting revenue-sharing agreements

OTP-based IRSF

Triggering One-Time Password requests to premium numbers controlled by fraudsters.

Automated scripts, botnets, exploiting OTP verification workflows

SIM Closure Fraud

Impersonating regulatory bodies to convince customers to close their SIM cards, potentially leading to further fraud.

Social engineering, phishing tactics

Flash Calls

Exploiting phone number verification systems through spoofed caller IDs or similar number ranges.

Spoofed caller IDs, manipulation of call forwarding mechanisms

 

The Challenges in IRSF Fraud Prevention and Detection

As the landscape of International Revenue Share Fraud (IRSF) continues to evolve in sophistication and scale, detection and prevention efforts are increasingly challenged. Despite the importance of real-time monitoring, current systems often suffer from latency, limited scalability, and delayed alerting. These limitations, coupled with the time-intensive task of analyzing large volumes of data, hinder timely and effective responses to emerging threats.

  1. Detection Speed: Reactive vs. Real-Time Monitoring
    Traditional methods relied on reactive approaches, such as reviewing call data records (CDRs) or manual audits, which allowed fraudsters to exploit networks over prolonged periods. 
    In contrast, real-time fraud detection and monitoring instantly identify irregular traffic patterns, significantly reducing the window of opportunity for fraudsters to carry out scams. 
  2. Approach: Rule-Based Systems vs. AI and Machine Learning
    Traditional systems depended on static, rule-based algorithms that flagged predefined fraud patterns, such as high call volumes to premium-rate numbers, but struggled to detect evolving or novel fraud tactics.
    Modern fraud detection systems leverage AI and machine learning to analyze vast datasets, adapt to emerging fraud patterns, and proactively predict potential fraud before it occurs. These systems can identify new fraud schemes, offering a more dynamic and anticipatory approach.
  3. Scalability: Manual Checks vs. Automated Systems
    Traditional methods required manual intervention, with telecom operators sifting through call records or using basic filters to identify fraud. This time-consuming approach struggled to scale as telecom traffic increased.
    Modern fraud detection systems, powered by AI and machine learning, automate the process and handle massive data volumes with minimal human intervention. These systems monitor global traffic 24/7, instantly flagging and blocking suspicious activity, making them highly scalable. 
  4. Accuracy: False Positives vs. Precision in Detection
    Traditional rule-based systems often had a high rate of false positives, mistakenly flagging legitimate traffic as fraudulent. This not only increased the workload on fraud prevention teams but also led to service interruptions and customer dissatisfaction when legitimate calls were blocked.
    Modern AI-driven fraud detection systems are more accurate and precise, learning and refining algorithms over time to distinguish between fraudulent activity. This drastically reduces false positives and minimizes customer disruptions.
  5. Adaptability: Static vs. Dynamic Systems
    Traditional fraud prevention systems were often static, relying on known fraud patterns. When fraudsters modified their tactics or used new technologies, these systems were slow to adapt, leaving critical gaps in protection.
    Advanced fraud prevention tools are dynamic and quickly adapt to new attack vectors, leveraging cutting-edge technologies like machine learning and behavioral analytics to identify and block fraud before significant damage occurs. 
  6. Fraud Mitigation: Post-Detection vs. Preemptive Action
    Traditional fraud prevention methods typically focused on addressing fraud only after it was detected.
    In contrast, AI-powered fraud prevention platforms take a proactive approach, using predictive algorithms to stop fraud before it occurs. By detecting anomalies in real-time and triggering automated actions—such as blocking fraudulent traffic or alerting operators—these systems minimize the impact on both businesses and customers. 

Preventing IRSF Fraud: Proactive Early Warning and AI-Driven Fraud Detection

IRSF fraud operates as a silent threat, often going unnoticed until significant damage has already been done. The longer these fraud activities remain undetected, the greater the potential for fraudsters to exploit system vulnerabilities, scale the attack, and maximize their illicit profits. Delayed detection allows for the accumulation of fraudulent traffic, which may involve large volumes of calls or messages directed to premium-rate numbers, making the attack more complex and harder to contain over time.

To effectively combat IRSF fraud and similar threats, a proactive, AI-driven fraud prevention tool is essential. Neural Technologies’ advanced Fraud Management Solution leverages artificial intelligence (AI), machine learning, and real-time monitoring to detect, analyze, and prevent fraud before it can escalate. By continuously analyzing massive datasets, the solution identifies anomalies and fraud patterns as they emerge, enabling telecommunications providers, MVNOs and digital enterprises to respond swiftly and mitigate losses.

Our advanced solution provides early warning mechanisms to identify IRSF fraud at its inception. These early warning mechanisms give telecom operators a critical head start, enabling faster identification and response. Leveraging machine learning, behavioral profiling, predictive analytics, real-time dashboards, and case management tools, we provide telecom operators with a comprehensive and dynamic defense solution against fraud.

In addition, our platform also offers a data security module to safeguard your customers' personally identifiable information (PII), ensuring regulatory compliance. 

Neural Technologies' Fraud Management Solution empowers telecommunications operators and digital enterprises to tackle IRSF fraud and emerging fraud risks before they escalate, ensuring proactive fraud detection, rapid response, and enhanced data security. 

Reach out today to book a consultation with us and strengthen your fraud prevention strategy.