DocumentCode :
658334
Title :
Privacy Preserving for Tagging Recommender Systems
Author :
Tianqing Zhu ; Gang Li ; Yongli Ren ; Wanlei Zhou ; Ping Xiong
Volume :
1
fYear :
2013
fDate :
17-20 Nov. 2013
Firstpage :
81
Lastpage :
88
Abstract :
Tagging recommender systems allow Internet users to annotate resources with personalized tags. The connection among users, resources and these annotations, often called afolksonomy, permits users the freedom to explore tags, and to obtain recommendations. Releasing these tagging datasets accelerates both commercial and research work on recommender systems. However, adversaries may re-identify a user and her/his sensitivity information from the tagging dataset using a little background information. Recently, several private techniques have been proposed to address the problem, but most of them lack a strict privacy notion, and can hardly resist the number of possible attacks. This paper proposes an private releasing algorithm to perturb users´ profile in a strict privacy notion, differential privacy, with the goal of preserving a user´s identity in a tagging dataset. The algorithm includes three privacy preserving operations: Private Tag Clustering is used to shrink the randomized domain and Private Tag Selection is then applied to find the most suitable replacement tags for the original tags. To hide the numbers of tags, the third operation, Weight Perturbation, finally adds Lap lace noise to the weight of tags We present extensive experimental results on two real world datasets, Delicious and Bibsonomy. While the personalization algorithmis successful in both cases.
Keywords :
Internet; data privacy; pattern clustering; random processes; recommender systems; Bibsonomy; De.licio.us; Internet users; Laplace noise; background information; differential privacy; folksonomy; personalization algorithm; personalized tags; privacy-preserving operations; private releasing algorithm; private tag clustering; private tag selection; randomized domain; replacement tags; resource annotation; sensitivity information; tagging datasets; tagging recommender systems; user identity preservation; user profile; weight perturbation; Clustering algorithms; Data privacy; Noise; Privacy; Recommender systems; Sensitivity; Tagging; Differential Privacy; Privacy Preserving; Tagging Recommender System;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Web Intelligence (WI) and Intelligent Agent Technologies (IAT), 2013 IEEE/WIC/ACM International Joint Conferences on
Conference_Location :
Atlanta, GA
Print_ISBN :
978-1-4799-2902-3
Type :
conf
DOI :
10.1109/WI-IAT.2013.12
Filename :
6689997
Link To Document :
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