In this paper, we introduce a conformal prediction method to construct prediction sets in a oneshot federated learning setting. More specifically, we define a quantile-of-quantiles estimator and prove that for any distribution, it is possible to output prediction sets with desired coverage in only one round of communication. To mitigate privacy issues, we also describe a locally differentially private version of our estimator. Finally, over a wide range of experiments, we show that our method returns prediction sets with coverage and length very similar to those obtained in a centralized setting. Overall, these results demonstrate that our method is particularly well-suited to perform conformal predictions in a one-shot federated learning setting.
翻译:在本文中,我们引入了一种一致的预测方法,在一个直径的联盟学习环境中构建预测组。更具体地说,我们定义了量化的估计计算器,并证明在任何分布中,只有一轮通信的输出预测组可以达到理想的覆盖范围。为了缓解隐私问题,我们还描述了一个本地不同版本的估算数的私人版本。最后,在一系列广泛的实验中,我们显示我们的方法返回预测组的覆盖范围和长度与集中环境中获得的非常相似。总的来说,这些结果表明,我们的方法特别适合在一个直径的联邦学习环境中进行符合要求的预测。