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Forgetting Outside the Box: Scrubbing Deep Networks of Information Accessible from Input-Output Observations

机译:忘记在框外:擦洗从输入输出观测可访问的深度信息

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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 final 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 final activations and weight dynamics of a DNN inspired by Neural Tangent Kernels to compute the information in the final activations.
机译:我们描述了一种用于从培训的深网络中删除培训数据队列依赖的过程,该培训的深度网络可以提高和概括以前的不同读数功能,可以扩展,以确保在网络的最终激活中忘记。我们介绍了一个新的界限,可以从关于忘记的遗忘的群组从一个黑盒网络中查询的信息提取多少信息,该网站仅观察到输入输出行为。所提出的遗忘过程具有从模型的线性化版本的微分方程导出的确定性部分,以及通过增加对损失景观的几何形状的噪声来确保信息破坏的随机部分。我们利用了神经切线内核灵感的DNN的最终激活和权重动态之间的连接来计算最终激活中的信息。

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