Forgetting Outside the Box: Scrubbing Deep Networks of Information Accessible from Input-Output Observations
Golatkar, Aditya, Achille, Alessandro, Soatto, Stefano
We describe a procedure for removing dependency on a cohort of training data from a trained deep network that improves upon and generalizes previous methods to different readout functions, and can be extended to ensure forgetting in the activations of the network. We introduce a new bound on how much information can be extracted per query about the forgotten cohort from a black-box network for which only the input-output behavior is observed. The proposed forgetting procedure has a deterministic part derived from the differential equations of a linearized version of the model, and a stochastic part that ensures information destruction by adding noise tailored to the geometry of the loss landscape. We exploit the connections between the activation and weight dynamics of a DNN inspired by Neural Tangent Kernels to compute the information in the activations.
Mar-5-2020
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- North America > United States > California > Los Angeles County > Los Angeles (0.14)
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- Research Report (0.64)
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- Information Technology > Security & Privacy (0.46)
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