Book traversal links for 2.4. Rule Definition and Pre-Implementation Testing
2.4. Rule Definition and Pre-Implementation Testing
Effective from 8/9/2021LFIs should employ TM detection scenarios (or “rules”) that are designed to identify potentially suspicious or illegal transactions and elevate them for further review and investigation, as warranted. LFIs utilizing automated systems should perform a typology assessment to design appropriate rule- or scenario-based automated monitoring capabilities and processes. Transactions may be suspicious simply in virtue of their individual characteristics (such as their value, source, destination, or use of intermediaries) or because, together with other transactions, they form a pattern that diverges from expected or historical transactional activity or may otherwise be indicative of illicit activity, including the evasion of reporting or recordkeeping requirements.
TM rules may be automated or manual and should employ value and other thresholds and parameters that take into account the specific risks and contexts of the institution, as identified in the financial crimes risk assessment, and the specific product or service and customer type involved in the transaction. To this end, LFIs should perform risk-based customer and product segmentation, so that rule parameters and thresholds are appropriately calibrated to the type of activity subject to TM. LFIs with larger transaction volumes should consider employing the use of statistical tools or methods such as above-the-line and below-the-line testing, which involves increasing and decreasing the predetermined thresholds of TM rules in a testing environment and measuring the resulting output, to better fine-tune their calibrations and reduce the volume of false-positive alerts.
In order to identify patterns of potentially suspicious or illegal activity spanning multiple transactions, LFIs should group individual TM parameters and thresholds into multi-factor risk scenarios in order to more precisely target transaction patterns and behaviors consistent with known illicit financing typologies. Key typologies and associated indicators of relevance in the context of the UAE published by the FIU are included in the CBUAE’s Guidance for LFIs on Suspicious Transaction Reporting.4 The use of scenarios should not be limited to LFIs with automated transaction monitoring systems, as smaller institutions with less-automated systems can and should apply the same logic in training and guiding their staff to detect these more complex risks. However, LFIs with a larger scale of operations are expected to have in place automated systems capable of handling the risks from an increased volume and variance of transactions. In all cases, LFIs should maintain documentation that articulates the institution’s current detection scenarios and their underlying assumptions, parameters, and thresholds.
Where automated systems are employed, LFIs should perform pre-implementation testing of TM rules and systems, using historical transaction data as appropriate. Such testing should include system integration testing to ensure compatibility of the TM system with source systems and other AML/CFT compliance infrastructure and user acceptance testing to ensure that the system performs as anticipated in the operating environment. Material data mapping, transaction coding, and other data quality issues, as well as irregularities in TM model performance and outputs, identified through pre-implementation testing should be prioritized for remediation and subject to re-testing prior to the deployment of a TM system.
4 Available at https://www.centralbank.ae/en/cbuae-amlcft.