AI

Is AI outmanoeuvring the fight against financial crime?

By Ralph Post, Chief Technology Officer, Fourthline

The lines between our digital and physical worlds have dissolved.ย No longerย is it enoughย to simplyย keepingย chip andย pinย information secure;ย there’sย an invisible warย beingย waged on everyย facetย of our connected lives.ย 

And whilst technology has made peopleโ€™s lives easier, it has also opened newย avenues for sophisticated attacks.ย Financial crime, inย all ofย its forms, like money laundering and fraud,ย is an expensive problemย thatย is expected toย costย $15.63 trillion by 2029.ย 

With the rise ofย attack methods likeย social engineering, deepfakes and otherย artificial intelligence (AI)ย powered threats, this problem is onlyย going to grow.ย ย 

Traditionally, financial services institutions have relied on rules-based systems and manual checks. But in the face of new attacks, these protection methods are no longer effective โ€“ theyย lackย the speed and scale of modern criminal networks.ย ย 

Fromย old, reliableย reactive methodsโ€ฆย ย 

For decades, theย financial servicesย industry has relied on two foundational pillars to prevent fraud:ย Know Your Customer (KYC)ย andย anti-money laundering (AML).ย These have typically been reactive,ย manual processesย for organisationsย to follow. This has meant that threats may have been missed, or there is a risk of false positives.ย 

However, in todayโ€™sย digital-first world, these traditional, manual processes are being outmanoeuvred and overwhelmed.ย Theย older protection methods areย fundamentallyย reactive,ย andย are notย designed for AI-based attacks. This has meant thatย sophisticatedย threatsย slip through the cracks of manual reviews, and at the same time compliance teams are buried under false positives, leading to an inefficient system.ย 

To win this new game, fintech firmsย need to build upon traditional KYC and AML practices.ย This is whereย AIย and machine learningย driven proactive processesย come intoย the fray.ย Byย analysingย millions of data points in real-timeย andย identifyingย patterns inย data,ย AIย moves toย a holistic, risk-based assessment of peopleโ€™s identity.ย This pattern recognition is essential for effective fraud detection and prevention.ย ย 

โ€ฆtoย aย proactiveย AI-driven approachย 

At the point of onboarding,ย KYCย mustย beย anย AI-powered process, soย thatย potential risks and inconsistenciesย areย flagged at theย start.ย An advanced AI platform can automatically verify thousands of different ID document types globally, checkingย if they are legitimate, going beyond what humans can see. This, coupled with liveness detection, ensures that an individual is who they say they are;ย itโ€™sย also an approachย thatโ€™sย fit to combat serious threats likeย deep fakes.ย 

AMLย shouldย equallyย beย AI-drivenย andย provide continuous monitoring. As such, banks will be able to trace the flow of funds across complexย networks, andย can flag suspicious transaction patterns that are different from typical behaviour. With anomalies being flagged on an ad hoc basis, it means that the burden on compliance teams will be reduced, and they will be able to focus their time on dealing with the real threats. Similarly with fraud detection, AI canย identifyย and predict future fraudulent activity as it happens, which protects both customers and the financial services institution from monetary and reputational losses.ย 

Thisย layeredย approach,ย is crucial because no single check can catch all fraud.ย Itโ€™sย fundamentallyย all about AIย anticipatingย nefariousย actorsย next move, protecting both the customer and the organisation from financial and reputational losses.ย 

Building protection within AI systemsย 

As digital banking becomes increasingly ingrained in society, it will be imperative to ensure customersโ€™ data is kept safe and secure. So, for AI models to be truly trusted and effective, they must be built upon a foundation of scalability,ย security,ย humanย ethicsย and integrity.ย ย 

Importantly, the effectiveness of any AI system is based upon the quality of the data fed intoย it. As such, building a secure AI model for any financial institutionย means having robust data governance and protection as the foundation.ย The data that is fed into the model should beย accurateย and complete, and thisย is further strengthened by strong human oversight.ย ย 

An AI system that is effective should be transparent, and this is where explainable AI comes into play.ย This means thatย organisationsย must be able to understand and justify the outputs of the model internally and externally. This explainability element will also ensure that the model is trustworthy,ย ethical,ย andย not biased.ย 

How AI is redefining the fight against financial crimeย 

AI isย redefiningย the fight against financial crime by moving fromย a reactive rules-basedย approach to one that is proactive and intelligent.ย AI and machine learning can be used to automate the verification of ID documents, checking security features,ย biometrics,ย andย livenessย at the point of onboarding.ย 

The fight againstย financialย crime isย a continuous and evolving challengeย for organisations, where the protection ofย customers andย aย businessโ€™ bottom lineย comeย first.ย Withย 90%ย of financial institutionsย alreadyย using AI to combat emerging fraud threats,ย itย allows them to be one step ahead.ย Thisย representsย a fundamental shift in financial crime prevention to ensure a much safer and more transparent global financial system.ย 

Through building scalable,ย secure,ย and ethical AI systems, all financial institutions, traditional andย fintechs,ย canย keep pace with current threats, and build a resilient foundation to protect against future threats.ย As threat actors constantly rewrite the rules of the game, the only winning strategy is for organisations to create their ownย rules.ย 

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