Title: Classification and retrieval method of personal health data based on differential privacy

Authors: Guanpeng Xu; Liang Zhao

Addresses: Department of Physical Education, The Engineering and Technical College of Chengdu University of Technology, Leshan, 614000, Sichuan, China ' Physical Education Institute, Shandong University of Technology, Zibo, 255000, Shandong, China

Abstract: Research on personal health data classification and retrieval methods can improve the accuracy and efficiency of medical decision-making, promoting the development of personalised medicine. To overcome the issues of low accuracy, long retrieval time, and low satisfaction in traditional methods, a classification and retrieval method of personal health data based on differential privacy is proposed. The method involves encrypting personal health data using linear regression model and differential privacy and constructing a classification objective function through integrated manifold learning that classifies the encrypted results of personal health data. Binary hash codes are used to retrieve the classification results, and the decrypted retrieval results are provided to users for personal health data classification and retrieval. The experimental results demonstrate that this method achieves a maximum accuracy of 96.8% in personal health data classification and retrieval, with a minimum retrieval time of 20 ms and an average satisfaction of 97.1% for the retrieval results.

Keywords: differential privacy; personal health data; classification and retrieval; linear regression model; encrypted results; binary hash code.

DOI: 10.1504/IJDMB.2025.142979

International Journal of Data Mining and Bioinformatics, 2025 Vol.29 No.1/2, pp.102 - 118

Received: 28 Jul 2023
Accepted: 08 Nov 2023

Published online: 02 Dec 2024 *

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