New privacy analysis for SVT enables exponential noise plus threshold correction and appending, raising precision and recall up to 50%.
Differentially Private Algorithms for Empirical Machine Learning
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abstract
An important use of private data is to build machine learning classifiers. While there is a burgeoning literature on differentially private classification algorithms, we find that they are not practical in real applications due to two reasons. First, existing differentially private classifiers provide poor accuracy on real world datasets. Second, there is no known differentially private algorithm for empirically evaluating the private classifier on a private test dataset. In this paper, we develop differentially private algorithms that mirror real world empirical machine learning workflows. We consider the private classifier training algorithm as a blackbox. We present private algorithms for selecting features that are input to the classifier. Though adding a preprocessing step takes away some of the privacy budget from the actual classification process (thus potentially making it noisier and less accurate), we show that our novel preprocessing techniques significantly increase classifier accuracy on three real-world datasets. We also present the first private algorithms for empirically constructing receiver operating characteristic (ROC) curves on a private test set.
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cs.CR 1years
2024 1verdicts
UNVERDICTED 1representative citing papers
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New privacy analysis for SVT enables exponential noise plus threshold correction and appending, raising precision and recall up to 50%.