Combating fraud in the digital world with the support of AI

SMART Cybersecurity Handbook 2022 Information Security

Traditionally, cybersecurity entailed a reactive approach where organisations used learnings from previous compromises to improve their defences. With technology evolving and people embracing the likes of mobile wallets, banking apps and other solutions to manage transactions, businesses must rethink how best to bolster anti-fraud mechanisms. The answer lies in artificial intelligence (AI).

“Since the onset of the Covid-19 pandemic, financial institutions have accelerated their digital transformation programmes. Many customers have embraced using online channels for everything from applying for loans and buying goods, to performing international transfers and other high value transactions. This has seen branch visits and ATM transactions reducing considerably over the past 18-months,” says Marcin Nadolny, head of EMEA Banking and Insurance Fraud at SAS.

However, as customers move to the digital world, so too are fraudsters. Cyber fraud, digital payments fraud, identity theft and employee embezzlement are all on the increase. In fact, the pandemic has seen the fraud and financial crime landscape shifting to become even more technology-driven than in the past. Cybercrime-as-a-service, digital fingerprints for sale, SIM swapping, social engineering, malicious use of AI and digital skimming even when cards are not present are just some of the new styles of attacks to take note of.

Key tools in the battle

Data and analytics have become key tools to combat the surge in financial-related crimes. AI and specifically machine learning, can provide financial institutions with automated algorithms that incorporate a cross-channel view of customer behaviour, help to spot complex fraud trends and reduce false positives in parallel. Information about devices, the geolocation of users and even behavioural biometrics are playing the role of additional fuel for analytics.

“In the current fast-moving world, models require the right data to spot fraud, but also models should be adaptive, that means being able to adjust automatically and to catch constantly changing behaviours. Dynamic behavioural profiles and adaptive machine learning ensures organisations always stay up to date with changing fraud trends.” adds Nadolny.

Grozdana Maric, head of CEMEA Fraud and Security Intelligence at SAS, agrees that fraud detection and investigation can be significantly supported by AI and machine learning technologies.

“Fraud risk is escalating for financial institutions and other business. Using the technology and analytics to address all types of fraud becomes an increasing need, allowing for more sophisticated detection and investigation methods, reduced costs and increased efficiencies,” she says.

Real-time decisions

Sophisticated analytics techniques provide businesses with a significant advantage to manage and control fraud losses in real-time, reduce the number of false positives and to enhance overall investigation. Instead of simply reacting to past information, machine learning delivers a forward-looking advantage.

“But this does not mean introducing more authentication. Instead, it is about incorporating stronger authentication into the environment. Admittedly, it is becoming more complex to authenticate users without causing delay in the convenience consumers are seeking from digital channels. Things like 3D Secure authentication, one-time passwords, biometric security measures and tokens can all be considered to increase security without impeding the flow of the customer experience,” says Maric.

An additional advantage of using AI and machine learning is that decisions whether to approve or deny payments are no longer purely based on amount, time, data and merchant. Systems are ‘trained’ to look at what the usual customer behaviour is. If a transaction differs significantly, such as small-value purchases from places the person has not been, or banking through a new device, it automatically gets flagged on the system. And because the decisions are AI-driven, decisions to stop transactions happen in milliseconds in time to approve or decline a payment.

“Today, fraud detection entails a comprehensive approach to match data points with activities to find what is abnormal. Fraudsters have developed sophisticated tactics, so it is essential to stay on top of these changing approaches of gaming the system. The fraud detection and prevention technology chosen should be able to learn from complex data patterns. It should use sophisticated decision models to better manage false positives and detect network relationships to see an holistic view of the activity of fraudsters and criminals,” says Maric. “Combining machine learning methods – including deep learning neural networks, random forests and support vector machines – as well as proven methods, like logistic regression, has proven to be far more accurate and effective than approaches based only on rules.”

The importance of connections and interactions

Building from here, exploring connections and interactions between people to catch more fraud becomes increasingly important in the connected landscape. Through this network analytics driven by AI and machine learning, organisations can better identify suspicious communities, organised crime groups, collusion between employees and customers and even direct and indirect links to known fraud cases.

“Business and governments alike have embraced technologies like data visualisation and AI to greatly reduce and even prevent the economical and reputational repercussions of fraud. Analysts and investigators work together, breaking down siloes, scoring and prioritising alerts based on severity, then route high-priority alerts for more in-depth analysis. And while it will take time for more organisations to embrace this, given the severity of digital fraud, they need to do it sooner rather than later,” concludes Nadolny.




Share this article:
Share via emailShare via LinkedInPrint this page



Further reading:

What are MFA fatigue attacks, and how can they be prevented?
Information Security
Multifactor authentication is a security measure that requires users to provide a second form of verification before they can log into a corporate network. It has long been considered essential for keeping fraudsters out. However, cybercriminals have been discovering clever ways to bypass it.

Read more...
SA's cybersecurity risks to watch
Information Security
The persistent myth is that cybercrime only targets the biggest companies and economies, but cybercriminals are not bound by geography, and rapidly digitising economies lure them in large numbers.

Read more...
Cyber insurance a key component in cyber defence strategies
Information Security
[Sponsored] Cyber insurance has become a key part of South African organisations’ risk reduction strategies, driven by the need for additional financial protection and contingency plans in the event of a cyber incident.

Read more...
Deception technology crucial to unmasking data theft
Information Security Security Services & Risk Management
The ‘silent theft’ of data is an increasingly prevalent cyber threat to businesses, driving the ongoing leakage of personal information in the public domain through undetected attacks that cannot even be policed by data privacy legislation.

Read more...
Data security and privacy in global mobility
Security Services & Risk Management Information Security
Data security and privacy in today’s interconnected world is of paramount importance. In the realm of global mobility, where individuals and organisations traverse borders for various reasons, safeguarding sensitive information becomes an even more critical imperative.

Read more...
Sophos celebrates partners and cybersecurity innovation at annual conference
News & Events Information Security
[Sponsored] Sun City hosted Sophos' annual partner event this year, which took place from 12 to 14 March. Sophos’ South African cybersecurity distributors and resellers gathered for an engaging two-day conference.

Read more...
The CIPC hack has potentially serious consequences
Editor's Choice Information Security
A cyber breach at the South African Companies and Intellectual Property Commission (CIPC) has put millions of companies at risk. The organisation holds a vast database of registration details, including sensitive data like ID numbers, addresses, and contact information.

Read more...
Navigating South Africa's cybersecurity regulations
Sophos Information Security Infrastructure
[Sponsored] Data privacy and compliance are not just buzzwords; they are essential components of a robust cybersecurity strategy that cannot be ignored. Understanding and adhering to local data protection laws and regulations becomes paramount.

Read more...
AI augmentation in security software and the resistance to IT
Security Services & Risk Management Information Security
The integration of AI technology into security software has been met with resistance. In this, the first in a series of two articles, Paul Meyer explores the challenges and obstacles that must be overcome to empower AI-enabled, human-centric decision-making.

Read more...
Milestone Systems joins CVE programme
Milestone Systems News & Events Information Security
Milestone Systems has partnered with the Common Vulnerability and Exposures (CVE) Programme as a CVE Numbering Authority (CNA), to assist the programme to find, describe, and catalogue known cybersecurity issues.

Read more...