Title
Holistic Collaborative Privacy Framework for Users' Privacy in Social Recommender Service.
Abstract
The current business model for existing recommender services is centered around the availability of users' personal data at their side whereas consumers have to trust that the recommender service providers will not use their data in a malicious way. With the increasing number of cases for privacy breaches, different countries and corporations have issued privacy laws and regulations to define the best practices for the protection of personal information. The data protection directive 95/46/EC and the privacy principles established by the Organization for Economic Cooperation and Development (OECD) are examples of such regulation frameworks. In this paper, we assert that utilizing third-party recommender services to generate accurate referrals are feasible, while preserving the privacy of the users' sensitive information which will be residing on a clear form only on his/her own device. As a result, each user who benefits from the third-party recommender service will have absolute control over what to release from his/her own preferences. We proposed a collaborative privacy middleware that executes a two stage concealment process within a distributed data collection protocol in order to attain this claim. Additionally, the proposed solution complies with one of the common privacy regulation frameworks for fair information practice in a natural and functional way -which is OECD privacy principles. The approach presented in this paper is easily integrated into the current business model as it is implemented using a middleware that runs at the end-users side and utilizes the social nature of content distribution services to implement a topological data collection protocol.
Year
DOI
Venue
2014
10.13140/2.1.1714.5289
CoRR
Field
DocType
Volume
Internet privacy,Privacy by Design,Computer security,Computer science,Data Protection Directive,Privacy policy,Personally identifiable information,Information privacy,Information sensitivity,Privacy software,Privacy laws of the United States
Journal
abs/1411.3737
ISSN
Citations 
PageRank 
Journal of Platform Technology, March 2014 Volume 02-01 Pages 11-31
0
0.34
References 
Authors
20
3
Name
Order
Citations
PageRank
Ahmed M. Elmisery1819.06
Seungmin Rho21468.49
Dmitri Botvich300.34