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首页> 外文期刊>IEEE Signal Processing Magazine >Signal Processing and Machine Learning with Differential Privacy: Algorithms and Challenges for Continuous Data
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Signal Processing and Machine Learning with Differential Privacy: Algorithms and Challenges for Continuous Data

机译:具有差分隐私的信号处理和机器学习:连续数据的算法和挑战

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摘要

Private companies, government entities, and institutions such as hospitals routinely gather vast amounts of digitized personal information about the individuals who are their customers, clients, or patients. Much of this information is private or sensitive, and a key technological challenge for the future is how to design systems and processing techniques for drawing inferences from this large-scale data while maintaining the privacy and security of the data and individual identities. Individuals are often willing to share data, especially for purposes such as public health, but they expect that their identity or the fact of their participation will not be disclosed. In recent years, there have been a number of privacy models and privacy-preserving data analysis algorithms to answer these challenges. In this article, we will describe the progress made on differentially private machine learning and signal processing.
机译:私人公司,政府实体和医院等机构通常会收集有关其客户,客户或患者的个人的大量数字化个人信息。这些信息大部分是私人信息或敏感信息,未来的关键技术挑战是如何设计系统和处理技术,以从这种大规模数据中得出推论,同时又要保持数据和个人身份的私密性和安全性。个人通常愿意共享数据,尤其是出于公共卫生之类的目的,但是他们希望不会透露自己的身份或参与的事实。近年来,已经出现了许多隐私模型和隐私保护数据分析算法来应对这些挑战。在本文中,我们将描述差分专用机器学习和信号处理方面的进展。

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