Context:
In a major initiative to combat digital fraud, the Reserve Bank of India (RBI) recently launched MuleHunter.AI, an AI-powered tool designed to help financial institutions identify Mule Bank Accounts.
More on the news:
- MuleHunter.AI is a part of the central bank’s ongoing commitment to mitigating digital fraud and enhancing the security of India’s banking system.
- In the past year, the Indian government froze around 4.5 lakh mule bank accounts to tackle the growing problem.
Reasons behind developing MuleHunter.AI:
Mule accounts have become a serious challenge for the banking industry, with reports of fraudulent transactions amounting to Rs 400-500 crore per month at some large banks.
These frauds are often used to launder the proceeds of cybercrimes and undermine public trust in the financial system.
Before MuleHunter.AI, banks primarily used rule-based systems to detect mule accounts.
- However, these systems often produced high false positives and took longer to identify suspicious accounts, leaving many undetected.
According to the National Crime Records Bureau (NCRB), online financial frauds account for 67.8 percent of cybercrime complaints, highlighting the critical need for effective AI-based fraud prevention solutions.
Mule account cases have been on the rise, and a whopping 53% of the total fraud threats to financial institutions were caused by money mules in 2023.
Despite government and regulatory bodies actively working to fight this, cybercriminals continue to come up with innovative ways to circumvent the law and pursue money laundering activities.
About MuleHunter.AI and its working:
MuleHunter.AI is an AI/ML-based solution developed by the Reserve Bank Innovation Hub (RBIH) in Bengaluru.
- The RBIH is a wholly owned subsidiary of the Reserve Bank of India set up to promote and facilitate an environment that accelerates innovation across the financial sector.
It is currently being piloted with two public sector banks.
This innovative step marks a significant milestone in enhancing the capabilities of financial institutions to protect themselves and their customers from the growing threat of digital fraud and money laundering schemes.
It leverages advanced machine learning (ML) algorithms to analyze transaction and account data, predicting mule accounts with greater accuracy and speed than traditional rule-based systems.
This approach improves the detection rate and reduces the number of false positives, allowing banks to identify suspected mule accounts more quickly and effectively.