Nvidia Blog 02月16日
How AI Helps Fight Fraud in Financial Services, Healthcare, Government and More
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全球欺诈活动日益猖獗,给企业和个人带来巨大损失。传统欺诈检测方法已难以应对海量数据和快速变化的欺诈手段。AI技术凭借其强大的数据分析和模式识别能力,在反欺诈领域展现出巨大潜力。金融机构、政府部门和医疗保健行业纷纷采用AI技术,提高欺诈检测的准确性和效率,减少经济损失。NVIDIA等公司提供的AI平台,为反欺诈提供了全面的解决方案,涵盖数据准备、模型训练和部署等环节。AI反欺诈有望为全球节省数十亿美元的损失。

💰AI技术能有效提升欺诈检测准确率,最高可达40%,显著降低金融机构声誉和经济损失。它能全面分析交易数据,识别传统方法难以发现的欺诈模式和异常行为。

🏦金融服务业正利用NVIDIA技术对抗身份盗窃、账户盗用、虚假交易和支票欺诈等行为。例如,NVIDIA RAPIDS Accelerator for Apache Spark 加速数据处理,从而能处理海量交易数据。此外,还可使用NVIDIA AI 工作流进行欺诈检测,该工作流结合了XGBoost 和图神经网络 (GNN) 等 AI 工具以及 NVIDIA RAPIDS、NVIDIA Triton 和 NVIDIA Morpheus,以检测欺诈并减少误报。

🏥在医疗保健领域,AI 通过模式和异常检测来识别不寻常的索赔,并审查账单数据中潜在的欺诈活动。实时监控可以检测源头的可疑活动,而自动化索赔处理有助于减少人为错误并检测不一致之处,同时提高运营效率。

🏛️美国政府部门也开始使用机器学习分析数据,打击支票欺诈。美国财政部估计,AI 帮助官员在 2024 财年预防或追回了超过 40 亿美元的欺诈资金。美国国税局也在探索使用 NVIDIA 的加速数据科学框架,以识别纳税人记录中的异常模式。

Companies and organizations are increasingly using AI to protect their customers and thwart the efforts of fraudsters around the world.

Voice security company Hiya found that 550 million scam calls were placed per week in 2023, with INTERPOL estimating that scammers stole $1 trillion from victims that same year. In the U.S., one of four noncontact-list calls were flagged as suspected spam, with fraudsters often luring people into Venmo-related or extended warranty scams.

Traditional methods of fraud detection include rules-based systems, statistical modeling and manual reviews. These methods have struggled to scale to the growing volume of fraud in the digital era without sacrificing speed and accuracy. For instance, rules-based systems often have high false-positive rates, statistical modeling can be time-consuming and resource-intensive, and manual reviews can’t scale rapidly enough.

In addition, traditional data science workflows lack the infrastructure required to analyze the volumes of data involved in fraud detection, leading to slower processing times and limiting real-time analysis and detection.

Plus, fraudsters themselves can use large language models (LLMs) and other AI tools to trick victims into investing in scams, giving up their bank credentials or buying cryptocurrency.

But AI — coupled with accelerated computing systems— can be used to check AI and help mitigate all of these issues.

Businesses that integrate robust AI fraud detection tools have seen up to a 40% improvement in fraud detection accuracy — helping reduce financial and reputational damage to institutions.

These technologies offer robust infrastructure and solutions for analyzing vast amounts of transactional data and can quickly and efficiently recognize fraud patterns and identify abnormal behaviors.

AI-powered fraud detection solutions provide higher detection accuracy by looking at the whole picture instead of individual transactions, catching fraud patterns that traditional methods might overlook. AI can also help reduce false positives, tapping into quality data to provide context about what constitutes a legitimate transaction. And, importantly, AI and accelerated computing provide better scalability, capable of handling massive data networks to detect fraud in real time.

How Financial Institutions Use AI to Detect Fraud

Financial services and banking are the front lines of the battle against fraud such as identity theft, account takeover, false or illegal transactions, and check scams. Financial losses worldwide from credit card transaction fraud are expected to reach $43 billion by 2026.

AI is helping enhance security and address the challenge of escalating fraud incidents.

Banks and other financial service institutions can tap into NVIDIA technologies to combat fraud. For example, the NVIDIA RAPIDS Accelerator for Apache Spark enables faster data processing to handle massive volumes of transaction data. Banks and financial service institutions can also use the new NVIDIA AI workflow for fraud detection — harnessing AI tools like XGBoost and graph neural networks (GNNs) with NVIDIA RAPIDS, NVIDIA Triton and NVIDIA Morpheus — to detect fraud and reduce false positives.

BNY improved fraud detection accuracy by 20% using NVIDIA DGX systems. PayPal improved real-time fraud detection by 10% running on NVIDIA GPU-powered inference, while lowering server capacity by nearly 8x. And Swedbank trained generative adversarial networks on NVIDIA GPUs to detect suspicious activities.

US Federal Agencies Fight Fraud With AI

The United States Government Accountability Office estimates that the government loses up to $521 billion annually due to fraud, based on an analysis of fiscal years 2018 to 2022. Tax fraud, check fraud and improper payments to contractors, in addition to improper payments under the Social Security and Medicare programs have become a massive drag on the government’s finances.

While some of this fraud was inflated by the recent pandemic, finding new ways to combat fraud has become a strategic imperative. As such, federal agencies have turned to AI and accelerated computing to improve fraud detection and prevent improper payments.

For example, the U.S. Treasury Department began using machine learning in late 2022 to analyze its trove of data and mitigate check fraud. The department estimated that AI helped officials prevent or recover more than $4 billion in fraud in fiscal year 2024.

Along with the Treasury Department, agencies such as the Internal Revenue Service have looked to AI and machine learning to close the tax gap — including tax fraud — which was estimated at $606 billion in tax year 2022. The IRS has explored the use of NVIDIA’s accelerated data science frameworks such as RAPIDS and Morpheus to identify anomalous patterns in taxpayer records, data access and common vulnerability and exposures. LLMs combined with retrieval-augmented generation and RAPIDS have also been used to highlight records that may not be in alignment with policies.

How AI Can Help Healthcare Stem Potential Fraud

According to the U.S. Department of Justice, ​​healthcare fraud, waste and abuse may account for as much as 10% of all healthcare expenditures. Other estimates have deemed that percentage closer to 3%. Medicare and Medicaid fraud could be near $100 billion. Regardless, healthcare fraud is a problem worth hundreds of billions of dollars.

The additional challenge with healthcare fraud is that it can come from all directions. Unlike the IRS or the financial services industry, the healthcare industry is a fragmented ecosystem of hospital systems, insurance companies, pharmaceutical companies, independent medical or dental practices, and more. Fraud can occur at both provider and patient levels, putting pressure on the entire system.

Common types of potential healthcare fraud include:

The same AI technologies that help combat fraud in financial services and the public sector can also be applied to healthcare. Insurance companies can use pattern and anomaly detection to look for claims that seem atypical, either from the provider or the patient, and scrutinize billing data for potentially fraudulent activity. Real-time monitoring can detect suspicious activity at the source, as it’s happening. And automated claims processing can help reduce human error and detect inconsistencies while improving operational efficiency.

Data processing through NVIDIA RAPIDS can be combined with machine learning and GNNs or other types of AI to help better detect fraud at every layer of the healthcare system, assisting patients and practitioners everywhere dealing with high costs of care.

AI for Fraud Detection Could Save Billions of Dollars

Financial services, the public sector and the healthcare industry are all using AI for fraud detection to provide a continuous defense against one of the world’s biggest drains on economic activity.

The NVIDIA AI platform supports the entire fraud detection and identity verification pipeline — from data preparation to model training to deployment — with tools like NVIDIA RAPIDS, NVIDIA Triton Inference Server and NVIDIA Morpheus on the NVIDIA AI Enterprise software platform.

Learn more about NVIDIA solutions for fraud detection with AI and accelerated computing.

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相关标签

AI 反欺诈 金融安全 医疗反欺诈
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