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Training Data Reconstruction: Privacy due to Uncertainty?

Authors :
Runkel, Christina
Gandikota, Kanchana Vaishnavi
Geiping, Jonas
Schönlieb, Carola-Bibiane
Moeller, Michael
Publication Year :
2024

Abstract

Being able to reconstruct training data from the parameters of a neural network is a major privacy concern. Previous works have shown that reconstructing training data, under certain circumstances, is possible. In this work, we analyse such reconstructions empirically and propose a new formulation of the reconstruction as a solution to a bilevel optimisation problem. We demonstrate that our formulation as well as previous approaches highly depend on the initialisation of the training images $x$ to reconstruct. In particular, we show that a random initialisation of $x$ can lead to reconstructions that resemble valid training samples while not being part of the actual training dataset. Thus, our experiments on affine and one-hidden layer networks suggest that when reconstructing natural images, yet an adversary cannot identify whether reconstructed images have indeed been part of the set of training samples.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.08544
Document Type :
Working Paper