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PRIVACY-PRESERVING SVM CLASSIFICATION SCIE SCOPUS

Title
PRIVACY-PRESERVING SVM CLASSIFICATION
Authors
Vaidya, JYu, HJJiang, XQ
Date Issued
2008-02
Publisher
SPRINGER LONDON LTD
Abstract
Traditional Data Mining and Knowledge Discovery algorithms assume free access to data, either at a centralized location or in federated form. Increasingly, privacy and security concerns restrict this access, thus derailing data mining projects. What is required is distributed knowledge discovery that is sensitive to this problem. The key is to obtain valid results, while providing guarantees on the nondisclosure of data. Support vector machine classification is one of the most widely used classification methodologies in data mining and machine learning. It is based on solid theoretical foundations and has wide practical application. This paper proposes a privacy-preserving solution for support vector machine (SVM) classification, PP-SVM for short. Our solution constructs the global SVM classification model from data distributed at multiple parties, without disclosing the data of each party to others. Solutions are sketched out for data that is vertically, horizontally, or even arbitrarily partitioned. We quantify the security and efficiency of the proposed method, and highlight future challenges.
Keywords
support vector machine; classification; privacy; security; PARTITIONED DATA; DATABASES; SECURE
URI
https://oasis.postech.ac.kr/handle/2014.oak/28730
DOI
10.1007/S10115-007-0
ISSN
0219-1377
Article Type
Article
Citation
KNOWLEDGE AND INFORMATION SYSTEMS, vol. 14, no. 2, page. 161 - 178, 2008-02
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유환조YU, HWANJO
Dept of Computer Science & Enginrg
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