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PayPal holds a unique position in Silicon Valley mythology. The PayPal Mafia—Former PayPal employees and founders—have gone on to found YouTube, Tesla, Inc., LinkedIn, Palantir, SpaceX, and other ventures.
And while it may be taken for granted today, PayPal revolutionized online payments and essentially became the payment system of the internet. People and businesses were quickly and freely sending money online—a fintech breakthrough that has only been further enhanced by mobile technology, social media, and data encryption.
15 years after being bought by eBay, PayPal passed 200 million users.
And yet, despite growing close to a half billion users today, PayPal, like many fintechs, has been plagued by one huge problem—fraud.
PayPal CEO Dan Schulman recently reported that the firm had identified and removed 4.5 million illegitimate user accounts—and Paypal was forced to end its incentivized account opening program in 2021. The fintech fraud woes, of course, are not limited to PayPal.
Fintech companies like neobanks and robo advisors have an average fraud rate of roughly 0.30%—which is as much as double credit cards’ historical rates of 0.15% to 0.20% and three times higher than debit cards. Due to these increasing incidents of fraud, some merchants have begun limiting or even blocking the debit and credit cards being offered by Chime, Cash App, and other neobanks.
So—what can fintech do about its fraud problems? The answer starts with the right machine learning solutions. Machine learning can significantly enhance fraud detection in fintech companies by leveraging advanced algorithms and automated decision-making processes.
In this blog post, you’ll see:
Fintech (financial technology) is a comprehensive term referring to software, mobile applications, and other technologies used to augment and automate traditional forms of finance—for both businesses and consumers alike. Fintech can include everything from straightforward mobile payment apps to complex blockchain networks housing encrypted transactions.
Fintech companies provide financial services and products by using technologies to augment, streamline or digitize their offerings for businesses or consumers. Today, fintech is involved in various sectors, such as mobile banking, lending and credit, payments, automated portfolio managers, cryptocurrencies, wealthtech, challenger banks, trading platforms, blockchain, open banking, BNPL, insurtech, and more—all challenging traditional banks.\
The COVID-19 pandemic led to a rise in the use of fintech services—but also brought with it a lot of fraud. In fact, payment fraud attacks against fintech companies soared by 70% in 2021, according to a study by GlobeNewswire. In 2022, hackers also accessed nearly 35 K PayPal accounts.
So, how might a payment fraud scam go down? Here are a few examples:
Other fintech scams include malware, mobile fraud, web skimming, and botnet or bot attacks.
Bot farms can have a significant impact on fraud for fintechs. Bot farms are networks of automated software programs (bots) that are designed to perform tasks online, such as creating fake accounts or making fraudulent transactions. These bots can be used by fraudsters to carry out various types of fraud, including account takeover, identity theft, and financial fraud.
Fintechs are particularly vulnerable to bot farm fraud because they typically operate in a digital environment, where transactions are carried out online and user identities are verified electronically. Bot farms can be used to bypass security measures such as multi-factor authentication and account verification processes, allowing fraudsters to gain access to accounts and carry out fraudulent transactions.
Many fintechs are still using outdated traditional methods, such as the rule-based method (think: if-else or if-then rules). In contrast, the AI-approach utilizes advanced algorithms and automated decision-making processes powered by machine learning to significantly enhance fraud detection for fintechs.
Leveraging machine learning starts—as with most machine learning—by analyzing new and historical data to identify patterns. Machine learning algorithms can analyze large volumes of data to identify patterns that are indicative of fraudulent behavior. Changes in regular patterns are known as data-specific anomalies, or irregularities in the data that are indicative of fraudulent activity. These can be further broken down into two categories:
Here are a few ways that machine learning can identify patterns and help fintech companies augment their fraud detection:
Thus far, you have seen how fraudsters work and some ways that machine learning can combat their nefarious deeds. Now, let’s look at the tangible benefits of using machine learning to root out fraud detection for fintechs.
Listing all the features that machine learning has to offer is interesting for many—but remember that fintech companies want to see tangible results that help their brand—and their bottom line.
If you might still be unsure about how machine learning can help fintechs enhance their fraud detection efforts—please consider the following:
This minimizes expenses as well as the amount of time required to review transactions, making the process more efficient. And let’s be honest. Merchants globally are predicted to suffer fraud losses exceeding $343 billion over the next five years as the volume and sophistication of ecommerce fraud increases. Reducing the amount of fraud is a huge cost savings for fintechs.
The over-centralized financial system and bank collapses in 2008-09 bank collapse led to the rise of fintech for several reasons:
With all of these tremendous positives—why let fraud spoil the party? ML Studio understands the opportunities that fintech has to offer the world—and the importance of accompanying it with state-of-the-art fraud detection with a built-in explainability module.
Get access to explainable AI and solve fraud detection crises and other real-world business problems with a robust and ready-to-use End-to-End AI platform that doesn’t go off budget.
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