Check fraud remains a serious challenge for banks, taking advantage of delays in the clearing process to manipulate balances and extract funds. Traditional systems rely on fixed rules and manual reviews – methods that are often too slow and easy to bypass.
Fraud detection and machine learning offer a smarter approach. By analyzing real-time behavior and adapting to evolving threats, machine learning helps banks catch fraud as it happens – not after the damage is done.
This article will break down how fraud detection and machine learning work together, why traditional methods fall short, and what banks can do to implement stronger, data-driven defenses today.
Machine learning and fraud detection are a powerful combination because machine learning can analyze vast amounts of transaction data in real time, detect subtle anomalies, and adapt to evolving fraud patterns.
Unlike rule-based systems, it continuously learns from past behavior, allowing banks to identify and prevent new types of fraud with greater accuracy and speed.
In 2024, the Federal Reserve reported that check fraud accounted for 30% of all fraud losses in U.S. financial institutions, second only to debit card fraud, which accounted for 39%. Notably, the number of institutions experiencing attempted check fraud increased by 10% from the previous year.
Machine learning offers a dynamic solution to rising threats in check fraud. It learns from transaction history, detects anomalies as they form, and adapts to new fraud strategies without requiring constant manual updates.
Banks have long relied on rule-based systems and manual reviews to detect check fraud, utilizing tools such as deposit limits, hold policies, and velocity checks.
However, these rigid controls often miss more sophisticated schemes, such as check kiting.
The rise of mobile and remote deposits makes tracking timing even more challenging. Criminals can initiate transactions from anywhere, at any time, without ever walking into a branch.
Float time has become a tool for fraud, and static rules are insufficient to address it.
Machine learning (ML) has revolutionized the way financial institutions detect and prevent fraud, particularly in high-risk areas.
As fraud tactics evolve, ML continuously updates its understanding of what fraud looks like, giving banks a critical edge.
Here are the key roles machine learning plays in modern fraud prevention:
ML algorithms establish behavioral baselines for each account, flagging deviations that may signal fraud.
For example, if a business consistently deposits payroll checks in the $5,000 to $8,000 range and suddenly deposits two $25,000 checks from unrelated banks, the system immediately recognizes the anomaly.
Rather than reviewing transactions after the fact, ML systems score each transaction in real time.
Analysts assess risk by examining factors such as transaction amount, timing, frequency, account history, device data, and counterparty behavior.
High-risk items are either flagged for review or halted automatically, minimizing potential losses.
ML models evolve with new data. They retrain continuously, learning from emerging fraud behaviors.
For instance, when fraudsters shift timing or distribute activity across multiple institutions, ML systems can still detect the overarching pattern by analyzing behavior across the network.
Here are the benefits of applying machine learning to detect and prevent check fraud:
Here is how to implement machine learning effectively:
The strength of your fraud detection model depends on the depth and quality of your data.
Without clean, structured, and relevant data, even the most advanced algorithm will fail to detect meaningful patterns.
VALID Systems' Real-Time Loss Alerts (RTLA)© improve traditional transaction data with real-time presentment channel information, helping to detect high-risk check activity before it's visible through internal data alone.
Raw data doesn't make fraud visible – features do.
Feature engineering converts raw transaction behavior into specific, trackable fraud signals that machine learning models can interpret and act upon.
There's no universal "best model."
The right approach depends on your data volume, operational capacity, and need for explainability. Starting simple allows for iteration and trust-building.
VALID's InteliFUNDS platform uses highly optimized ML models that strike a balance between speed and accuracy, allowing sub-second decisions that deliver immediate liquidity to trusted users while holding suspect checks for further analysis.
Model output only has value if it results in action. For ML to prevent fraud, it must be tightly integrated with operational systems where real-time decisions happen.
Even the best machine-learning models require human oversight. Analyst review helps refine false positives, flag new fraud strategies, and reinforce institutional expertise in the system.
VALID's systems INclearing Loss Alerts step in where rules and image analysis fail – using behavioral analytics and machine learning to identify fraud with high accuracy without disrupting legitimate transactions. This keeps the risk low and ensures good volume is flowing.
ML models degrade over time if left unchecked.
Fraudsters adapt quickly, and models must evolve to keep pace with them. Regular retraining and drift monitoring are non-negotiable.
VALID leverages AI to recognize subtle patterns in transactional behavior that human analysts or legacy systems might overlook.
Fraud rings don't respect bank boundaries.
Collaboration expands your perspective, helps you detect fraud earlier, and makes your models smarter through the sharing of intelligence.
Check fraud continues to evolve, and so should your fraud defense strategy.
If your institution is ready to move beyond outdated controls and take a proactive stance against check fraud, VALID Systems offers proven, scalable solutions that deliver real-time results.
VALID Systems translates machine learning into real-world fraud prevention with two key solutions: InteliFUNDS and RTLA.
InteliFUNDS makes real-time deposit decisions, approving 99% of checks instantly while isolating the small fraction that poses a risk.
RTLA (Real-Time Loss Alerts) monitors every check presentment and flags over 75% of items that would result in charge-offs.
Banks using VALID don't just detect check fraud – they stay ahead of it.
Want smarter check fraud protection without slowing down operations?
Contact VALID Systems today and see how our ML-powered solutions can protect your institution.