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A Deep Learning Approach for Privacy Preservation in Assisted Living

机译:辅助生活中隐私保护的深度学习方法

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In the era of Internet of Things (IoT) technologies the potential for privacy invasion is becoming a major concern especially in regards to healthcare data and Ambient Assisted Living (AAL) environments. Systems that offer AAL technologies make extensive use of personal data in order to provide services that are context-aware and personalized. This makes privacy preservation a very important issue especially since the users are not always aware of the privacy risks they could face. A lot of progress has been made in the deep learning field, however, there has been lack of research on privacy preservation of sensitive personal data with the use of deep learning. In this paper we focus on a Long Short Term Memory (LSTM) Encoder-Decoder, which is a principal component of deep learning, and propose a new encoding technique that allows the creation of different AAL data views, depending on the access level of the end user and the information they require access to. The efficiency and effectiveness of the proposed method are demonstrated with experiments on a simulated AAL dataset. Qualitatively, we show that the proposed model learns privacy operations such as disclosure, deletion and generalization and can perform encoding and decoding of the data with almost perfect recovery.
机译:在物联网时代(物联网)技术中,隐私入侵的潜力正在成为特别关注的是,特别是对医疗保健数据和环境辅助生活(AAL)环境。提供AAL Technologies的系统广泛使用个人数据,以提供上下文知识和个性化的服务。这使得隐私保护是一个非常重要的问题,特别是因为用户并不总是知道他们所能面临的隐私风险。深入学习领域取得了很大的进展,然而,利用深度学习缺乏对敏感个人数据的隐私保护的研究。在本文中,我们专注于一个长的短期内存(LSTM)编码器解码器,它是深度学习的主要组成部分,并提出了一种新的编码技术,允许创建不同的AAL数据视图,这取决于访问级别最终用户和他们需要访问的信息。用在模拟的AAL数据集上进行实验证明了所提出的方法的效率和有效性。定性地,我们表明该模型学习隐私操作,例如披露,删除和泛化,并且可以对几乎完美的恢复来执行数据的编码和解码。

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