the privacy of individuals. Here we combine the provable privacy guarantees of the
differential privacy framework with the flexibility of Gaussian processes (GPs). We propose a
method using GPs to provide differentially private (DP) regression. We then improve this
method by crafting the DP noise covariance structure to efficiently protect the training data,
while minimising the scale of the added noise. We find that this cloaking method achieves …