Title :
Preserving privacy and frequent sharing patterns for social network data publishing
Author :
Fung, Benjamin C. M. ; Yan´an Jin ; Jiaming Li
Author_Institution :
CIISE, Concordia Univ., Montreal, QC, Canada
Abstract :
Social network data provide valuable information for companies to better understand the characteristics of their potential customers with respect to their communities. Yet, sharing social network data in its raw form raises serious privacy concerns because a successful privacy attack not only compromises the sensitive information of the target victim but also the relationship with his/her friends or even their private information. In recent years, several anonymization techniques have been proposed to solve these issues. Most of them focus on how to achieve a given privacy model but fail to preserve the data mining knowledge required for data recipients. In this paper, we propose a method to k-anonymize a social network dataset with the goal of preserving frequent sharing patterns, one of the most important kinds of knowledge required for marketing and consumer behaviour analysis. Experimental results on real-life data illustrate the trade-off between privacy and utility loss with respect to the preservation of frequent sharing patterns.
Keywords :
consumer behaviour; data privacy; marketing data processing; publishing; social networking (online); consumer behaviour analysis; frequent sharing patterns preservation; k-anonymity; marketing analysis; privacy preservation; social network data publishing; utility loss; Algorithm design and analysis; Conferences; Data privacy; Knowledge engineering; Portable computers; Privacy; Social network services;
Conference_Titel :
Advances in Social Networks Analysis and Mining (ASONAM), 2013 IEEE/ACM International Conference on
Conference_Location :
Niagara Falls, ON