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MIA_ML

Modifications were made on shadow models' training methodology in order to prevent overfitting

  1. Added weight decay factor
  2. Implemented early stopping
  3. Loads & saves best model based on evaluation metrics
  4. Creates member vs non-member attack dataset based on shadow testset

How to run

  1. (Optional) Customize train / inference configurations in config.yaml

  2. (Optional) python train_target.py: Train the victim model which is the target of the extraction.

  3. python train_shadow.py: Corresponds to Diagram 1-1 ~ Diagram 2-2 illustrated below.

  4. python train_attack.py: Corresponds to Diagram 2-3 ~ Diagram 3 illustrated below.

  5. python inference_attack.py: Corresponds to Diagram 4 illustrated below.

Result

  • Replicated the paper's configuration on config.yaml
  • ROC Curve is plotting TPR / FPR according to MIA classification thresholds
MIA Attack Metrics Accuracy Precision Recall F1 Score
CIFAR10 0.7761 0.7593 0.8071 0.7825
CIFAR100 0.9746 0.9627 0.9875 0.9749
MIA ROC Curve CIFAR10 MIA ROC Curve CIFAR100
roc_curve CIFAR10 roc_curve CIFAR100

Paper's Methodology in Diagrams

Page2

Page3

Page4

Page5

Page6

Page7

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Page9

Page10

About

🔒 Implementation of Shokri et al(2016) "Membership Inference Attacks against Machine Learning Models"

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