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Home/Authors/Kaan Durmaz

Kaan Durmaz

1 indexed paper

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Publications per year

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26

Top categories

ML×1Crypto×1Vision×1

Frequent co-authors

Jan Schuchardt1×
Sebastian Schmidt1×
Stephan Günnemann1×

Research Timeline

2026
Amplified Patch-Level Differential Privacy for Free via Random Cropping

The paper shows that using random cropping, a standard data augmentation technique, can naturally amplify differential privacy guarantees for machine learning models without requiring any changes to the training process.

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Papers

cs.LGcs.CRcs.CVRecentMar 25, 2026

Amplified Patch-Level Differential Privacy for Free via Random Cropping

Kaan Durmaz, Jan Schuchardt, Sebastian Schmidt, Stephan Günnemann

The paper shows that using random cropping, a standard data augmentation technique, can naturally amplify differential privacy guarantees for machine learning models without requiring any changes to t…

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