Preventing false discovery in interactive data analysis is hard
Moritz Hardt, Jonathan Ullman
FOCS 2014
Misapplication of statistical data analysis is a common cause of spurious discoveries in scientific research. Existing approaches to ensuring the validity of inferences drawn from data assume a fixed procedure to be performed, selected before the data are examined. In common practice, however, data analysis is an intrinsically adaptive process, with new analyses generated on the basis of data exploration, as well as the results of previous analyses on the same data. We demonstrate a new approach for addressing the challenges of adaptivity based on insights from privacy-preserving data analysis. As an application, we show how to safely reuse a holdout data set many times to validate the results of adaptively chosen analyses.
Moritz Hardt, Jonathan Ullman
FOCS 2014
Cynthia Dwork, Jeffrey Lotspiech, et al.
STOC 1996
Cynthia Dwork, Vitaly Feldman, et al.
CACM
Moritz Hardt, Eric Price
NeurIPS 2014