Privacy-Preserving Conformal Prediction Under Local Differential Privacy
Journal:
arXiv
Published Date:
May 21, 2025
Abstract
Conformal prediction (CP) provides sets of candidate classes with a
guaranteed probability of containing the true class. However, it typically
relies on a calibration set with clean labels. We address privacy-sensitive
scenarios where the aggregator is untrusted and can only access a perturbed
version of the true labels. We propose two complementary approaches under local
differential privacy (LDP). In the first approach, users do not access the
model but instead provide their input features and a perturbed label using a
k-ary randomized response. In the second approach, which enforces stricter
privacy constraints, users add noise to their conformity score by binary search
response. This method requires access to the classification model but preserves
both data and label privacy. Both approaches compute the conformal threshold
directly from noisy data without accessing the true labels. We prove
finite-sample coverage guarantees and demonstrate robust coverage even under
severe randomization. This approach unifies strong local privacy with
predictive uncertainty control, making it well-suited for sensitive
applications such as medical imaging or large language model queries,
regardless of whether users can (or are willing to) compute their own scores.