Difference between revisions of "SOCR News FSU DataImpact Symposium 2019"

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(Created page with "== SOCR News & Events: Statistics, the Impact of Big Data Conference== ===Logistics=== * Event: Statistics, the Impact of Big Data - 60<sup>th</sup> Annivers...")
 
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[http://www.socr.umich.edu/people/dinov/ Ivo Dinov]
 
[http://www.socr.umich.edu/people/dinov/ Ivo Dinov]
  
== Title ==
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=== Title ===
 
''DataSifter: Sharing of Sensitive Data via Statistical Obfuscation''
 
''DataSifter: Sharing of Sensitive Data via Statistical Obfuscation''
  

Revision as of 08:42, 8 March 2019

SOCR News & Events: Statistics, the Impact of Big Data Conference

Logistics

Presenter

Ivo Dinov

Title

DataSifter: Sharing of Sensitive Data via Statistical Obfuscation

Abstract

There are no practical, reliable, and effective mechanisms to share sensitive information to inspire novel methodological developments without compromising intellectual property, confidentiality, personal data. In many fields, like health, financial, intelligence, socioeconomics, high-dimensional data is prevalent and there is a profound need to develop advanced data interrogation techniques to extracting useful and actionable information the balancing the utility of the data with the risk of exposing private, personal, or secure organizational information. Excessive scrambling or encoding of the information makes it less useful for modelling, or analytical processing. Insufficient preprocessing may uncover sensitive information and introduce a substantial risk for re-identification of individuals or trade secrets by various stratification techniques. To address this problem, we developed a novel statistical method (DataSifter) that provides on-the-fly de-identification of sensitive structured and unstructured high dimensional data, such as clinical data from electronic health records (EHR). DataSifter technology enables administrative control over the balance between risk of data re-identification and preservation of the data information content. Under careful set up of user-defined privacy levels, our simulation experiments and real biomedical case-studies suggest that the DataSifter protects privacy while maintaining data utility for different types of outcomes of interest. The application of DataSifter on ABIDE data provides a realistic demonstration of how to employ the proposed algorithm on EHR with more than 500 features (DataSifter.org).





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