LGCRITMLMar 26, 2020

Not All Features Are Equal: Discovering Essential Features for Preserving Prediction Privacy

arXiv:2003.12154v213 citations
AI Analysis

This addresses privacy concerns for users of cloud ML services by enabling feature suppression without provider collaboration, though it is an incremental improvement on existing privacy methods.

The paper tackles the problem of preserving prediction privacy in cloud-based machine learning services by identifying and suppressing non-essential features, reducing mutual information by 85.01% with only a 1.42% utility loss.

When receiving machine learning services from the cloud, the provider does not need to receive all features; in fact, only a subset of the features are necessary for the target prediction task. Discerning this subset is the key problem of this work. We formulate this problem as a gradient-based perturbation maximization method that discovers this subset in the input feature space with respect to the functionality of the prediction model used by the provider. After identifying the subset, our framework, Cloak, suppresses the rest of the features using utility-preserving constant values that are discovered through a separate gradient-based optimization process. We show that Cloak does not necessarily require collaboration from the service provider beyond its normal service, and can be applied in scenarios where we only have black-box access to the service provider's model. We theoretically guarantee that Cloak's optimizations reduce the upper bound of the Mutual Information (MI) between the data and the sifted representations that are sent out. Experimental results show that Cloak reduces the mutual information between the input and the sifted representations by 85.01% with only a negligible reduction in utility (1.42%). In addition, we show that Cloak greatly diminishes adversaries' ability to learn and infer non-conducive features.

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