Data-Copying in Generative Models: A Formal Framework
There has been some recent interest in detecting and addressing memorization of training data by deep neural networks. A formal framework for memorization in generative models, called "data-copying," was proposed by Meehan et. al. (2020). We build upon their work to show that their framewo...
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Zusammenfassung: | There has been some recent interest in detecting and addressing memorization
of training data by deep neural networks. A formal framework for memorization
in generative models, called "data-copying," was proposed by Meehan et. al.
(2020). We build upon their work to show that their framework may fail to
detect certain kinds of blatant memorization. Motivated by this and the theory
of non-parametric methods, we provide an alternative definition of data-copying
that applies more locally. We provide a method to detect data-copying, and
provably show that it works with high probability when enough data is
available. We also provide lower bounds that characterize the sample
requirement for reliable detection. |
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DOI: | 10.48550/arxiv.2302.13181 |