Privacy in Data Publishing for Tailored Recommendation Scenarios
نویسندگان
چکیده
Personal information is increasingly gathered and used for providing services tailored to user preferences, but the datasets used to provide such functionality can represent serious privacy threats if not appropriately protected. Work in privacy-preserving data publishing targeted privacy guarantees that protect against record re-identification, by making records indistinguishable, or sensitive attribute value disclosure, by introducing diversity or noise in the sensitive values. However, most approaches fail in the high-dimensional case, and the ones that don’t introduce a utility cost incompatible with tailored recommendation scenarios. This paper aims at a sensible trade-off between privacy and the benefits of tailored recommendations, in the context of privacy-preserving data publishing. We empirically demonstrate that significant privacy improvements can be achieved at a utility cost compatible with tailored recommendation scenarios, using a simple partition-based sanitization method.
منابع مشابه
ارایه یک روش جدید انتشار دادهها با حفظ محرمانگی با هدف بهبود دقّت طبقهبندی روی دادههای گمنام
Data collection and storage has been facilitated by the growth in electronic services, and has led to recording vast amounts of personal information in public and private organizations databases. These records often include sensitive personal information (such as income and diseases) and must be covered from others access. But in some cases, mining the data and extraction of knowledge from thes...
متن کاملPredictive Anonymization: Utility-Preserving Publishing of Sparse Recommendation Data
Recently, recommender systems have been introduced to predict user preferences for products or services. In order to seek better prediction techniques, data owners of recommender systems such as Netflix sometimes make their customers’ reviews available to the public, which raises serious privacy concerns. With only a small amount of knowledge about individuals and their ratings to some items in...
متن کاملPoster: Privacy-Aware Publishing of Netflix Data
To seek better prediction techniques, data owners of recommender systems such as Netflix sometimes make their customers’ reviews available to the public, which raises serious privacy concerns. With only a small amount of knowledge about individuals in a recommender system, an adversary may be able to re-identify users and consequently determine their item ratings. In this work, we present a rob...
متن کاملPrivacy-Preserving Data Publishing: A Survey on Recent Developments
The collection of digital information by governments, corporations, and individuals has created tremendous opportunities for knowledgeand information-based decision making. Driven by mutual benefits, or by regulations that require certain data to be published, there is a demand for the exchange and publication of data among various parties. Data in its original form, however, typically contains...
متن کاملPpdp-mlt: K−anonymity Privacy Preservation for Publishing Search Engine Logs
In this paper we investigate the problem of protecting privacy for publishing search engine logs. Search engines play a crucial role in the navigation through the vastness of the Web. Privacy-preserving data publishing (PPDP) provides methods and tools for publishing useful information while preserving data privacy. Recently, PPDP has received considerable attention in research communities, and...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Trans. Data Privacy
دوره 8 شماره
صفحات -
تاریخ انتشار 2015