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A security outsourcing machine learning method based on differential privacy

A machine learning and differential privacy technology, applied in the field of security outsourcing machine learning based on differential privacy, can solve problems such as low efficiency, achieve the effects of reducing interactive operations, realizing privacy protection, and reducing communication complexity

Active Publication Date: 2021-02-02
GUANGZHOU UNIVERSITY
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0009] In order to solve the low efficiency problem caused by adding different types of noise in the data set in the traditional solution, the present invention provides a secure outsourcing machine learning method based on differential privacy, combining cloud computing technology and differential privacy technology to combine complex computing and storage tasks Outsourcing not only ensures the security and privacy of machine learning, but also greatly reduces computing overhead and cost and improves computing efficiency, effectively alleviating the inefficiency and security problems faced by traditional outsourcing machine learning methods

Method used

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  • A security outsourcing machine learning method based on differential privacy
  • A security outsourcing machine learning method based on differential privacy

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Embodiment Construction

[0021] As a new type of data computing and storage mode, cloud-based data computing has very powerful data processing capabilities and larger storage space. The present invention uses cloud computing technology to complete a large number of local computing operations (including adding noise using differential privacy technology) with the help of cloud servers; through the interaction between cloud servers and machine learning model providers, machine learning tasks are completed, thereby realizing safe and efficient Outsource machine learning tasks. In order to facilitate the understanding of the present invention by those skilled in the art, the present invention will be described in detail below with reference to the drawings and embodiments, but the embodiments of the present invention are not limited thereto.

[0022] Some basic concepts involved in the present invention are as follows:

[0023] 1) Paillier Homomorphic Encryption: Homomorphic encryption technology is the ...

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Abstract

The invention discloses a security outsourcing machine learning method based on differential privacy, which belongs to the field of network space security. The method realizes that the data provider can process the data with homomorphic encryption technology without disclosing sensitive data to a third party. After uploading to the cloud server, the cloud server stores and adds noise to the encrypted data and obtains query functions through interaction with the machine learning model provider for machine learning. This method effectively combines outsourcing computing with differential privacy, which not only ensures the security and privacy of machine learning, but also greatly reduces computing overhead and computing costs and improves computing efficiency, effectively alleviating the problems faced by traditional outsourcing machine learning methods. inefficiencies and security issues.

Description

technical field [0001] The invention belongs to the field of cyberspace security, and in particular relates to a security outsourcing machine learning method based on differential privacy. Background technique [0002] With the development of the Internet and information technology, more and more data are generated and utilized. According to statistics, the current global data growth rate is about 40% per year, and the global big data industry will develop strongly in the next five years. Faced with the ever-increasing mass of data, cloud computing technology, as a new data computing and storage model, can greatly meet its storage and processing requirements. Through the storage and computing outsourcing capabilities of cloud computing technology, users can transfer local computing and storage needs to the cloud, and use the powerful computing and storage capabilities of cloud servers to improve the efficiency of data processing. Therefore, cloud computing technology with ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F21/62G06F21/60
CPCG06F21/602G06F21/6245
Inventor 李进雷震光李同姜冲
Owner GUANGZHOU UNIVERSITY
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