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Tim johnson
Tim johnson

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Fraud Data Analytics: How to Detect and Prevent Fraud Using Data?

Fraud data analytics is one of the most sought-after practices to detect and control unethical methods of acquiring sensitive data. The rising cases of financial fraud and data breaches justify why businesses are implementing big data analytics for fraud analysis and prevention.

According to a study, over 422 million Americans were impacted by the hazards of compromised data in 2022. Interestingly, credit card fraud accounted for more than 43.7% of identity thefts during the year.

With advancing technology and digital innovations, escaping the risks of fraud and financial loss has become challenging yet achievable for any business. Hence, companies using high-tech IT infrastructure and automated machinery are poised to adopt data analytics and shape a reliable anti-fraud strategy.

From startups to big organizations, fraud analysis contributes to risk prevention and management at every operational level.

If you're new to fraud analytics, this blog is worth your time to get you more details on how it can benefit your business.

What is Fraud Data Analytics?

Let's start with a definition of fraud analytics.

It's a method or technique that uses big data to detect and prevent financial fraud or risks. It helps in predicting future risks and fraudulent behavior.

By using data analytics for fraud management, companies can track suspicious activities using Machine learning models and data mining. As a result, it benefits them with fast and real-time fraud detection and prevention.

Source by: https://www.bluent.net/blog/fraud-data-analytics-to-protect-your-business/

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