The most time-consuming task, in particular, is reporting to the authorities. Processing remittances is becoming increasingly complex due to the need for various verifications and supporting documents depending on the purpose of the transfer, as well as differing rules across sending and receiving countries. While the adoption of remittance systems is progressing, most are limited to functions centered on deposit and withdrawal processing, and in many cases, judgments and verifications based on transaction details are handled manually. This is because, in addition to the difficulty of implementing a system that covers every possible pattern, it is also challenging to continuously keep up with regulatory revisions.
In addition, compliance checks used to be a factor that prolonged payment processing times. However, in recent years, many AI-driven solutions have emerged; in particular, major banks in Europe, the US, and Asia are utilizing machine learning in the fields of AML (Anti-Money Laundering) and fraud detection to reduce false positives and achieve higher detection accuracy. HSBC has successfully reduced false positives by approximately 60% while increasing detection rates by leveraging AI. This not only significantly reduces the time spent on detailed analysis and customer verification for false positives, but also contributes to the sophistication of financial crime prevention itself.
Furthermore, in trade finance, efforts are underway to shorten processing times and reduce errors by using AI to extract data from shipping documents and letters of guarantee, and to perform automatic matching and classification. There is also a shift from paper to digital in trade finance, and with legal frameworks being established and platforms being introduced in major Asian countries, further expansion of AI utilization is expected in the future.
AI excels at pattern recognition, and for routine checks, AML compliance checks can sometimes be completed in a matter of seconds to minutes. In trade finance as well, a 30% to 70% reduction*2 in man-hours and processing time per transaction can be expected. An increasing number of banks are adopting a method where AI is utilized for initial work followed by human verification, aiming to reduce time and improve operational efficiency through AI while ensuring the accuracy required in the financial industry.