A Privacy Preserving Deep Linear Regression Scheme Based on Homomorphic Encryption
نویسندگان
چکیده
منابع مشابه
Privacy Preserving using Homomorphic Encryption
In the recent time, privacy preserving has been studied extensively, because of the extensive explosion of sensitive information. Privacy preserving is one of the important areas that aim to provide security for secret information from unsolicited or unsanctioned disclosure. This has triggered the development of much privacy preserving technique using encryption algorithm. This work will presen...
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Linear regression with 2-norm regularization (i.e., ridge regression) is an important statistical technique that models the relationship between some explanatory values and an outcome value using a linear function. In many applications (e.g., predictive modelling in personalized health-care), these values represent sensitive data owned by several different parties who are unwilling to share the...
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We will look into privacy preserving biometrics using the example of a fingerprint reader and partially homomorphic encryption. Therefore we will cover the basics necessary to understand the discussed subject, partially homomorphic encryption and fingerprint based authentication, as well as showing a concrete protocol and its implications on performance and security of the system. While securit...
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The bloom filter method for privacy preserving record linkage [24] has been shown to be both efficient, and provide equivalent linkage quality to that achievable with unencoded identifiers [23]. However in some situations, the bloom filter method may be vulnerable to frequency attacks, which could potentially leak identifying information [18]. In this paper we extend the bloom filter protocol t...
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Privacy has received much attention but is still largely ignored in the multimedia community. Consider a cloud computing scenario, where the server is resource-abundant and is capable of finishing the designated tasks, it is envisioned that secure media retrieval and search with privacy-preserving will be seriously treated. In view of the fact that scaleinvariant feature transform (SIFT) has be...
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ژورنال
عنوان ژورنال: Journal on Big Data
سال: 2019
ISSN: 2579-0056
DOI: 10.32604/jbd.2019.08706