Synthetic datasets simultaneously allow for the dissemination of research data while protecting the privacy and confidentiality of respondents. Generating and analyzing synthetic datasets is straightforward, yet, a synthetic data analysis pipeline is seldom adopted by applied researchers. We outline a simple procedure for generating and analyzing synthetic datasets with the multiple imputation software mice (Version 3.13.15) in R. We demonstrate through simulations that the analysis results obtained on synthetic data yield unbiased and valid inferences and lead to synthetic records that cannot be distinguished from the true data records. The ease of use when synthesizing data with mice along with the validity of inferences obtained through ...
Introduction Demand to access high quality data at the individual level for medical and healthcare ...
How can we share sensitive datasets in such a way as to maximize utility while simultaneously safegu...
Summary: Differential privacy allows quantifying privacy loss resulting from accession of sensitive ...
Synthetic datasets simultaneously allow for the dissemination of research data while protecting the ...
Abstract: To protect the confidentiality of survey respondents ’ identities and sensi-tive attribute...
In many contexts, confidentiality constraints severely restrict access to unique and valuable microd...
Open research data provide considerable scientific, societal, and economic benefits. However, disclo...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
The availability of real-life data sets is of crucial importance for algorithm and application devel...
Big data analysis poses the dual problem of privacy preservation and utility, i.e., how accurate dat...
With the recent advances and increasing activities in data mining and analysis, the protection of th...
Archive for the synthetic data pre-conference workshop at the Open Science Festival on September 1, ...
AI-based data synthesis has seen rapid progress over the last several years and is increasingly reco...
With ever increasing capacity for collecting, storing, and processing of data, there is also a high ...
Clinical data analysis could lead to breakthroughs. However, clinical data contain sensitive informa...
Introduction Demand to access high quality data at the individual level for medical and healthcare ...
How can we share sensitive datasets in such a way as to maximize utility while simultaneously safegu...
Summary: Differential privacy allows quantifying privacy loss resulting from accession of sensitive ...
Synthetic datasets simultaneously allow for the dissemination of research data while protecting the ...
Abstract: To protect the confidentiality of survey respondents ’ identities and sensi-tive attribute...
In many contexts, confidentiality constraints severely restrict access to unique and valuable microd...
Open research data provide considerable scientific, societal, and economic benefits. However, disclo...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
The availability of real-life data sets is of crucial importance for algorithm and application devel...
Big data analysis poses the dual problem of privacy preservation and utility, i.e., how accurate dat...
With the recent advances and increasing activities in data mining and analysis, the protection of th...
Archive for the synthetic data pre-conference workshop at the Open Science Festival on September 1, ...
AI-based data synthesis has seen rapid progress over the last several years and is increasingly reco...
With ever increasing capacity for collecting, storing, and processing of data, there is also a high ...
Clinical data analysis could lead to breakthroughs. However, clinical data contain sensitive informa...
Introduction Demand to access high quality data at the individual level for medical and healthcare ...
How can we share sensitive datasets in such a way as to maximize utility while simultaneously safegu...
Summary: Differential privacy allows quantifying privacy loss resulting from accession of sensitive ...