(Re)Imagine

The Official Blog of Acuity Knowledge Partners

AML analytics: A journey from the quantitative to the qualitative model

Published on June 14, 2019 by Anisha Shangari and Swati Gera

All banks and financial institutions are now required to have a framework for combatting money laundering that will identify suspicious transactions and report them to the appropriate regulatory bodies.

Challenges posed by the framework – During and after implementation

Generation of a large number of false positives

This the most common challenge faced. Transaction-monitoring platforms currently in use have quantitative models at their core. However, an implemented model generates large volumes of alerts that need to be reviewed by operations teams. Close to 98% of these are false alerts, according to industry estimates. The challenges they pose are due to the following reasons:

1. Increased regulatory oversight and scrutiny

2. Constant changes to technology

3. Ever-expanding business and the resulting new anti-money laundering (AML) typologies (i.e., new methods, techniques and trends of money laundering)

4. Frequent changes to the configurations of quantitative models

5. Increasing need for skilled resources, with both technical and business skills

6. The need to build and train large teams for review and remediation

However, financial institutions face a conundrum: although they may have the best-in-class AML framework in place, they may still be fined by regulators for a lack of sound, adequate controls and reporting.

Improper implementation of controls

Controls are selected based on an entity’s risk profile, and the risk identified by analyzing the risk profile is a collation of risk areas and red flags that need to be addressed. However, many of a business’s activities may remain unmonitored, for the following two reasons:

1. As financial institutions expand into new geographies, products and channels, and as AML typographies change

2. Due to gaps between the risk identified by analyzing the risk profile and the controls implemented. This could be because of incorrect configurations of the model implemented, thresholds and scoring values, or mathematical calculations.

Data

Every change in business or regulatory requirement has necessitated adding data points and defining new workflows. The approach has been to add patches to existing core systems (as opposed to a complete overhaul of the system). This has resulted in data issues, and incomplete, inaccurate, and insufficient data cleansing and treatment.

Segmentation

Current methods of implementation mostly focus on thresholds and scoring values implemented at the organizational or legal entity level, based on the assumption that ‘one size fits all’. However, customer behavior is a combination of geography, product, channels and customer profile. We understand, though, that applying thresholds and scoring values at the customer level is not feasible; therefore, we believe similar transactional behaviors need to be identified and addressed as segments. This would help to delocalize the configurational settings and make the implemented controls more robust.

Challenges posed by regulation and the need for skilled resources

Money laundering reporting officers (MLROs) or chief compliance officers (CCOs) have generally been thought of as functional experts dealing with this particular domain. However, as the field of compliance has advanced, these roles have expanded to include many more responsibilities. The responsibility for all control implementations and the technical ownership of the implemented controls now lie with these professionals. This requires that they have both domain and technical knowhow. This is, therefore, a niche skillset and hard to find.

The future

We frequently hear that ‘machine learning and artificial intelligence’ is the solution – the qualitative approach, as opposed to the popular quantitative models. However, before implementing either of these, we need to focus on the underlying data. Data is key for qualitative models, and these models are very sensitive to the data being fed. The data needs to be cleansed, sliced and diced, according to a model’s requirements, and the correct skillset is required to understand the data and the treatment required for a particular type of data. We believe that qualitative models based on machine learning and artificial intelligence could be used as a platform to solve problems relating to segmentation, threshold tuning and gap analysis.

How we can help you

Acuity Knowledge Partners’ methodology and roadmap help financial institutions augment their efforts to address the challenges on both the people and technology fronts. Our team of business experts and data scientists can help you by

1. Supplementing resources to perform risk mapping, before and after implementation; model validation; threshold tuning; and segmentation

2. Providing technology solutions to increase the frequency of AML analytics (quantitative models)

3. Partnering to define, build and manage qualitative models


What's your view?
captcha code
Thank you for sharing your Comments

Share this on


About the Authors

Anisha Shangari has 5 years of experience in compliance/anti-fraud, having previously worked for American Express. Her expertise spans across the risk and compliance sector, focusing on know your customer (KYC) and fraud management. At Acuity Knowledge Partners she is responsible for KYC/AML support to Compliance Services. Anisha has done her Masters in Mathematics from University Of Delhi.

Swati Gera has 5 years of experience in Anti Money Laundering (AML) Analytics and Compliance reporting, having previously worked for Infosys. Her expertise spans across the risk and compliance sector, focusing on AML and know your customer (KYC). At Acuity Knowledge Partners she is responsible for KYC/AML support to Compliance Services. Swati has done her engineering from Lingayas University, Faridabad.

 post image 2 Blog
Navigating global compliance challenges with Acu....

In the fast-paced world of finance, with constantly evolving regulations and high stakes, ....Read More

 post image 2 Blog
Maximising efficiency in customer onboarding: di....

Introduction Customer onboarding or account opening refers to the process by which indivi....Read More

 post image 2 Blog
Trade-based money laundering: how it works and h....

Trade-based money laundering (TBML) is a complex and sophisticated method used by criminal....Read More

 post image 2 Blog
Unboxing the modern “Pandora’s box” –

Time and technology can certainly change the dynamics of anything. In the past, only regul....Read More

 post image 2 Blog
The UK complies with the Fifth Anti-Money Lau

The UK amended its anti-money laundering (AML) framework on 10 January 2020, enforcing Mon....Read More

Like the way we think?

Next time we post something new, we'll send it to your inbox