Book traversal links for 2.6. Outcomes Analysis and Management Information Systems Reporting
2.6. Outcomes Analysis and Management Information Systems Reporting
Effective from 8/9/2021LFIs should document and track TM outputs in order to identify and address any technical or operational issues and understand key risks or trends over time. Irregularities in TM system performance, including significant changes in the productivity of TM rules over time, may be indicative of underlying data quality or data integrity issues or of the need to recalibrate rule thresholds or parameters. Identified data quality or integrity issues should be reported back to designated data or owners, and apparent rule calibration issues (such as unproductive rules or those producing excessive volumes of false positive alerts) should be reported back to model owners for tuning and optimization. Where TM outcomes analysis reveals that certain transaction types or patterns are repeatedly flagged by the TM system and then consistently cleared as false positives by TM investigators, the LFI may consider employing a risk-based suppression logic or other “whitelisting” process to prevent the generation of alerts on activity repeatedly deemed not to be suspicious. Such methods, however, should not be applied to higher-risk customer or transaction types and should be carefully monitored and subject to periodic and event-driven testing, tuning, and validation, as described below.
In addition, LFIs should ensure that senior management is regularly updated on the performance and output of their TM program, including through the provision of metrics, trends, and other MIS reporting generated by TM systems or produced by TM alert review and investigation teams. Such reporting may include an analysis of the number of alerts produced by each TM rule and the proportion of such alerts that are cleared as false positives, that require further investigation, and that ultimately result in the filing of an STR/SAR. TM-related reporting and analysis should feed back into an LFI’s financial crimes risk assessment, and LFI management should use this information to ensure that the institution’s customers and transaction remain within the LFI’s risk appetite and that activity exceeding its risk appetite is addressed through appropriate risk mitigation measures, including but not limited to the use of account- or customer-based risk markers and/or activity, product, or service restrictions.