Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Privacy-aware Synthesizing for Crowdsourced Data

View through CrossRef
Although releasing crowdsourced data brings many benefits to the data analyzers to conduct statistical analysis, it may violate crowd users' data privacy. A potential way to address this problem is to employ traditional differential privacy (DP) mechanisms and perturb the data with some noise before releasing them. However, considering that there usually exist conflicts among the crowdsourced data and these data are usually large in volume, directly using these mechanisms can not guarantee good utility in the setting of releasing crowdsourced data. To address this challenge, in this paper, we propose a novel privacy-aware synthesizing method (i.e., PrisCrowd) for crowdsourced data, based on which the data collector can release users' data with strong privacy protection for their private information, while at the same time, the data analyzer can achieve good utility from the released data. Both theoretical analysis and extensive experiments on real-world datasets demonstrate the desired performance of the proposed method.
Title: Privacy-aware Synthesizing for Crowdsourced Data
Description:
Although releasing crowdsourced data brings many benefits to the data analyzers to conduct statistical analysis, it may violate crowd users' data privacy.
A potential way to address this problem is to employ traditional differential privacy (DP) mechanisms and perturb the data with some noise before releasing them.
However, considering that there usually exist conflicts among the crowdsourced data and these data are usually large in volume, directly using these mechanisms can not guarantee good utility in the setting of releasing crowdsourced data.
To address this challenge, in this paper, we propose a novel privacy-aware synthesizing method (i.
e.
, PrisCrowd) for crowdsourced data, based on which the data collector can release users' data with strong privacy protection for their private information, while at the same time, the data analyzer can achieve good utility from the released data.
Both theoretical analysis and extensive experiments on real-world datasets demonstrate the desired performance of the proposed method.

Related Results

Privacy and Security for Digital Health: Assessing Risks and Harms to Users
Privacy and Security for Digital Health: Assessing Risks and Harms to Users
Electronic Health (e-Health), such as mobile health (mHealth) and Health Information Systems (HIS), benefits healthcare consumers and professionals. However, it also poses potentia...
A Critical Review of Research on Ethics of Crowdsourced Translation at Home and Abroad (2009–2024)
A Critical Review of Research on Ethics of Crowdsourced Translation at Home and Abroad (2009–2024)
With the rapid development of global crowdsourced translation practices, research on the phenomenon’s multifaceted ethical dimensions has steadily progressed. This paper presents t...
Augmented Differential Privacy Framework for Data Analytics
Augmented Differential Privacy Framework for Data Analytics
Abstract Differential privacy has emerged as a popular privacy framework for providing privacy preserving noisy query answers based on statistical properties of databases. ...
Privacy Risk in Recommender Systems
Privacy Risk in Recommender Systems
Nowadays, recommender systems are mostly used in many online applications to filter information and help users in selecting their relevant requirements. It avoids users to become o...
Crowdsourced Forecasts and the Market Reaction to Earnings Announcement News
Crowdsourced Forecasts and the Market Reaction to Earnings Announcement News
ABSTRACT This study examines whether crowdsourced forecasts of earnings and revenues help investors unravel bias in earnings announcement news, which is commonly der...
Privacy Threats and Privacy Preservation in Multiple Data Releases of High-Dimensional Datasets
Privacy Threats and Privacy Preservation in Multiple Data Releases of High-Dimensional Datasets
A major challenge is when datasets are released to be utilized in the outside scope of data-collecting organizations, it is how to balance data utilities and data privacy. To achie...
THE SECURITY AND PRIVACY MEASURING SYSTEM FOR THE INTERNET OF THINGS DEVICES
THE SECURITY AND PRIVACY MEASURING SYSTEM FOR THE INTERNET OF THINGS DEVICES
The purpose of the article: elimination of the gap in existing need in the set of clear and objective security and privacy metrics for the IoT devices users and manufacturers and a...

Back to Top