Differentially Private Variational Inference for Non-conjugate Models
October 27, 2016 Β· Declared Dead Β· π Conference on Uncertainty in Artificial Intelligence
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Authors
Joonas JΓ€lkΓΆ, Onur Dikmen, Antti Honkela
arXiv ID
1610.08749
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.CR,
cs.LG,
stat.ME
Citations
49
Venue
Conference on Uncertainty in Artificial Intelligence
Last Checked
3 months ago
Abstract
Many machine learning applications are based on data collected from people, such as their tastes and behaviour as well as biological traits and genetic data. Regardless of how important the application might be, one has to make sure individuals' identities or the privacy of the data are not compromised in the analysis. Differential privacy constitutes a powerful framework that prevents breaching of data subject privacy from the output of a computation. Differentially private versions of many important Bayesian inference methods have been proposed, but there is a lack of an efficient unified approach applicable to arbitrary models. In this contribution, we propose a differentially private variational inference method with a very wide applicability. It is built on top of doubly stochastic variational inference, a recent advance which provides a variational solution to a large class of models. We add differential privacy into doubly stochastic variational inference by clipping and perturbing the gradients. The algorithm is made more efficient through privacy amplification from subsampling. We demonstrate the method can reach an accuracy close to non-private level under reasonably strong privacy guarantees, clearly improving over previous sampling-based alternatives especially in the strong privacy regime.
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