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    <title>Fraud.net - Latest Press Releases on ReleaseWire</title>
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      <title>Friendly Fraud Can Reduce Online Profits by 25% Says Fraud.net Study</title>
      <link>http://www.releasewire.com/press-releases/release-3.htm</link>
      <description><![CDATA[<div class="newsleft"><div class="newsbody"><p class="subheadline">Comprehensive analysis uncovers the challenges of first-party fraud, or “friendly” fraud, which is difficult to predict and detect, and is the most expensive form of fraud for business.</p><p>New York, NY -- (<a rel="nofollow" href="http://www.releasewire.com/">ReleaseWire</a>) -- 07/28/2020 --  Fraud.net, the leader in AI-Powered Online Fraud Prevention Solutions, today released the 2020 Benchmarking Report for Friendly Fraud. The report, which analyzed a random sampling of 100,000 chargebacks from orders that were processed over 3 years by large digital merchants, may be the most comprehensive survey of this type of fraud ever conducted.<br />
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"Friendly," or first-party fraud is when apparent customers make a digital e-commerce purchase and then renege, either because they obtained a better deal somewhere else (e.g. a lower price on an online airline ticket), or didn&apos;t end up needing the service (e.g. travel insurance), or just didn&apos;t want to pay for the goods or services they received. According to the Fraud.net survey, friendly fraud now occurs with 50 percent greater frequency than third-party fraud -- fraudulent use of a stolen credit card, for example -- contributing to a problem that is costing online businesses billions of dollars per year. <br />
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"First-party or friendly fraud involves what appears to be good customers making legitimate purchases, who then seek a refund or chargeback after the transaction is successfully completed," said Cathy Ross, Co-founder and President of Fraud.net. "Because they appear to be real sales at the time of purchase, many businesses can&apos;t prevent or predict this type of fraud and, worse, are reluctant to flag it after the fact, out of fear that they&apos;ll alienate a future customer."<br />
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These challenges around identifying and reporting friendly fraud create moral hazard and expose weak controls, resulting in some organized friendly fraudsters hitting the same businesses again and again. <br />
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Key findings of the study include<br />
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-Friendly fraud can result in a 1 percent reduction in legitimate sales, amounting to a 25 percent reduction in profits for online businesses.<br />
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-Friendly fraudsters will hit a company nine times before they&apos;re shut down, consequence-free, allowing them to move on to other businesses.<br />
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-Chargebacks often understate the true impact of friendly fraud, which can be four times as large.<br />
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"Enhancing data with collective intelligence -- looking at buying behavior and fraud across multiple companies and vendors -- and interpreting it with machine learning are the keys to identifying and preventing friendly fraud," said Ross."This also helps to address firms&apos; reluctance to flag friendly fraud, once they see many of these transactions are committed by repeat offenders."<br />
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The complete report, and a webinar discussing key findings, is available for free <a class="extlink"  target="_blank"  rel="nofollow noopener" title="here" href="https://fraud.net/fraud-benchmark-report-friendly-fraud/">here</a>.<br />
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About Fraud.net<br />
Fraud.net uses collective intelligence and machine learning to make digital transactions safe. Leveraging sophisticated AI / deep learning to analyze transaction data in real-time, Fraud.net identifies transactional anomalies and hard-to-detect fraud.  Fraud.net provides a unified solution for digital enterprises in every industry, including online retail, financial services, and travel. Fraud.net also provides the industry&apos;s only cloud-based "glass-box" system for fraud, offering a transparent and comprehensive presentation of risk to make businesses safer, smarter, and more profitable. Learn more at <a class="extlink"  target="_blank"  rel="nofollow noopener" title="www.fraud.net" href="http://www.fraud.net">www.fraud.net</a>. <br />
<br />
Media Contact:<br />
David Zweifler<br />
media@fraud.net<br />
+866-971-2030</p><p>For more information on this press release visit: <a rel="nofollow" href="http://www.releasewire.com/press-releases/release-3.htm">http://www.releasewire.com/press-releases/release-3.htm</a></p></div><h2>Media Relations Contact</h2><p>David Zweifler<br />Fraud.net<br />Telephone: 1-866-971-2030<br />Email: <a rel="nofollow" href="http://www.releasewire.com/press-releases/contact/1297867">Click to Email David Zweifler</a><br />Web: <a rel="nofollow" href="http://www.fraud.net">http://www.fraud.net</a><br /></div><div><p><img src="https://cts.releasewire.com/v/?sid=1297867&amp;s=f&amp;v=f" width="1" height="1" alt=""><span></span></p></div>]]></description>
      <pubDate>Tue, 28 Jul 2020 08:00:00 -0500</pubDate>
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