U.S.-U.K. PETs Prize Challenge: Anomaly Detection via Privacy-Enhanced Federated Learning.

IEEE transactions on privacy Pub Date : 2024-01-01 Epub Date: 2024-04-23 DOI:10.1109/tp.2024.3392721
Hafiz Asif, Sitao Min, Xinyue Wang, Jaideep Vaidya
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Abstract

Privacy Enhancing Technologies (PETs) have the potential to enable collaborative analytics without compromising privacy. This is extremely important for collaborative analytics can allow us to really extract value from the large amounts of data that are collected in domains such as healthcare, finance, and national security, among others. In order to foster innovation and move PETs from the research labs to actual deployment, the U.S. and U.K. governments partnered together in 2021 to propose the PETs prize challenge asking for privacy-enhancing solutions for two of the biggest problems facing us today: financial crime prevention and pandemic response. This article presents the Rutgers ScarletPets privacy-preserving federated learning approach to identify anomalous financial transactions in a payment network system (PNS). This approach utilizes a two-step anomaly detection methodology to solve the problem. In the first step, features are mined based on account-level data and labels, and then a privacy-preserving encoding scheme is used to augment these features to the data held by the PNS. In the second step, the PNS learns a highly accurate classifier from the augmented data. Our proposed approach has two major advantages: 1) there is no noteworthy drop in accuracy between the federated and the centralized setting, and 2) our approach is flexible since the PNS can keep improving its model and features to build a better classifier without imposing any additional computational or privacy burden on the banks. Notably, our solution won the first prize in the US for its privacy, utility, efficiency, and flexibility.

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美英 PETs 奖挑战赛:通过隐私增强联合学习进行异常检测。
隐私增强技术(PET)有可能在不损害隐私的情况下实现协作分析。这一点极为重要,因为协作分析可以让我们真正从医疗保健、金融和国家安全等领域收集的大量数据中获取价值。为了促进创新并将 PETs 从研究实验室推向实际应用,美国和英国政府于 2021 年合作提出了 PETs 奖项挑战,要求为我们当今面临的两个最大问题提供隐私增强解决方案:金融犯罪预防和大流行病应对。本文介绍了罗格斯大学的 ScarletPets 隐私保护联合学习方法,用于识别支付网络系统(PNS)中的异常金融交易。该方法采用两步异常检测方法来解决问题。第一步,根据账户级数据和标签挖掘特征,然后使用隐私保护编码方案将这些特征增强到 PNS 持有的数据中。第二步,PNS 从增强数据中学习高精度分类器。我们提出的方法有两大优势:1)在联盟式和集中式环境下,准确率没有显著下降;2)我们的方法非常灵活,因为 PNS 可以不断改进其模型和特征,以建立更好的分类器,而不会给银行带来任何额外的计算或隐私负担。值得注意的是,我们的解决方案因其隐私性、实用性、高效性和灵活性获得了美国一等奖。
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U.S.-U.K. PETs Prize Challenge: Anomaly Detection via Privacy-Enhanced Federated Learning.
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