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Visa Leverages AI To Prevent $40B In Fraud: How Machine Learning Is Combatting The Surge In Cybercrime And AI-Driven Scams

Visa Leverages AI To Prevent $40B In Fraud: How Machine Learning Is Combatting The Surge In Cybercrime And AI-Driven Scams

Visa運用人工智能防範400億美元的欺詐:機器學習如何應對網絡犯罪和人工智能驅動的騙局。
Benzinga ·  23:31

$Visa (V.US)$ has successfully leveraged artificial intelligence and machine learning to prevent $40 billion in fraudulent activities, according to a company executive.

$Visa (V.US)$據公司高管透露,Visa成功利用人工智能和機器學習技術防範了400億美元的欺詐行爲。

What Happened: James Mirfin, global head of risk and identity solutions at Visa, informed CNBC that the company has utilized AI and machine learning to combat fraudulent activities, which have nearly doubled from the previous year.

事件經過:Visa全球風險和身份解決方案負責人James Mirfin告訴CNBC,該公司利用人工智能和機器學習技術打擊欺詐行爲,欺詐行爲幾乎比前一年翻了一番。

Visa has managed to prevent $40 billion in fraudulent activities from October 2022 to September 2023, which is almost twice the amount from the previous year, Mirfin said.

據Mirfin透露,Visa在2022年10月至2023年9月成功防範了400億美元的欺詐行爲,幾乎是前一年的兩倍。

He explained that fraudsters use AI to generate primary account numbers (PAN) and repeatedly test them. This method, known as an enumeration attack, results in $1.1 billion in fraud losses annually.

他解釋說,欺詐分子利用人工智能生成主賬號號碼(PAN)並反覆測試。這種被稱爲枚舉攻擊的方法每年導致11億美元的欺詐損失。

"We look at over 500 different attributes around [each] transaction, we score that and we create a score –that's an AI model that will actually do that. We do about 300 billion transactions a year," Mirfin told CNBC.

Mirfin告訴CNBC:“我們會查看每個交易周圍的500多種不同屬性,進行評分並創建一個AI模型。我們每年處理大約3千億筆交易。”

Visa assigns a real-time risk score to each transaction to detect and prevent enumeration attacks in transactions processed remotely without a physical card via a card reader or terminal.

Visa爲每筆交易分配實時風險評分,以檢測和防範在沒有實體卡通過卡讀器或終端處理的遠程交易中的枚舉攻擊。

"Every single one of those [transactions] has been processed by AI. It's looking at a range of different attributes and we're evaluating every single transaction," Mirfin said.

Mirfin表示:“每一筆交易都是通過AI進行處理。它會查看一系列不同的屬性,同時我們還會評估每一筆交易。”

Visa also uses AI to assess the likelihood of fraud for token provisioning requests and has invested $10 billion in technology to reduce fraud and increase network security over the last five years.

Visa還利用人工智能評估代幣發放請求的欺詐可能性,並在過去五年中投資了100億美元的技術來減少欺詐和提高網絡安全性。

Why It Matters: The significance of Visa's achievement in preventing $40 billion in fraudulent transactions is underscored by the alarming rise in cybercrime. According to Charles Lobo, Visa's Regional Risk Officer for Central and Eastern Europe, Middle East, and Africa, cybercrime could rival the world's top economies by 2025, with projected costs reaching $10.5 trillion annually.

意義所在:Visa成功防範400億美元的欺詐交易的重要性,在於網絡犯罪的驚人增長。據Visa中東、非洲和中東歐地區的區域風險官Charles Lobo預計,到2025年,網絡犯罪可能與全球頂級經濟體媲美,預計年度成本將達到10.5萬億美元。

Additionally, the use of AI-generated fake IDs to bypass Know Your Customer (KYC) checks on cryptocurrency exchanges has become a widespread issue. OnlyFake, an online service, has been creating counterfeit IDs that successfully pass KYC checks, raising significant security concerns.

此外,利用人工智能生成虛假身份證繞過數字貨幣交易所的KYC檢查已成爲廣泛存在的問題。在線服務OnlyFake一直在製造可以成功通過KYC檢查的僞造身份證,這引發了重大的安全擔憂。

Moreover, the use of deepfake technology in scams is on the rise. In one instance, fraudsters used deepfake technology to impersonate a company's CFO during a video call, resulting in a $25 million loss, as reported by Hong Kong police.

此外,騙子們利用深度僞造技術進行欺詐的情況越來越多。警方報道稱,有人利用深度僞造技術冒充公司的CFO進行視頻通話,導致2500萬美元的損失。

Furthermore, the Hong Kong Securities and Futures Commission recently warned about a fraudulent cryptocurrency trading platform called "Quantum AI," which used deepfakes of Elon Musk to lure victims, highlighting the growing use of AI in committing fraud, particularly in Asia.

此外,香港證券及期貨事務監察委員會最近發出警告,稱存在一個名爲“Quantum AI”的欺詐數字貨幣交易平台,並利用埃隆·馬斯克的深度僞造圖片來誘騙受害者,凸顯了人工智能在亞洲及其他地區,尤其是在欺詐犯罪中的越來越廣泛的應用。

This story was generated using Benzinga Neuro and edited by Kaustubh Bagalkote

這個故事是使用Benzinga Neuro生成的,並由Kaustubh Bagalkote編輯

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