Fold-stratified cross-validation is a new validation methodology presented in the paper "Fold-stratified cross-validation for unbiased and privacy-preserving federated learning". It enables the unbiased validation of a model that has been trained on a multi-centric dataset using federated learning, while avoiding the retrieval of personally identifying information. In this jupyter notebook, Monte Carlo simulations are run to study the properties of stratified cross-validation using synthetic and real datasets.
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Monte Carlo simulations used to study stratified cross-validation.
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RomainBey/stratified-cross-validation
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Monte Carlo simulations used to study stratified cross-validation.
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