We consider the problem of distribution-free conformal prediction and the criterion of group conditional validity. This criterion is motivated by many practical scenarios including hidden stratification and group fairness. Existing methods achieve such guarantees under either restrictive grouping structure or distributional assumptions, or they are overly-conservative under heteroskedastic noise. We propose a simple reduction to the problem of achieving validity guarantees for individual populations by leveraging algorithms for a problem called multi-group learning. This allows us to port theoretical guarantees from multi-group learning to obtain obtain sample complexity guarantees for conformal prediction. We also provide a new algorithm for multi-group learning for groups with hierarchical structure. Using this algorithm in our reduction leads to improved sample complexity guarantees with a simpler predictor structure.
翻译:我们考虑的是无分配的一致预测问题和群体有条件有效性标准。这一标准受许多实际假设的驱动,包括隐蔽的分层和群体公平性。现有方法在限制性分组结构或分配假设下实现这种保障,或者在热心噪音下实现过度保守。我们建议简单地减少个人群体获得有效性保障的问题,办法是利用算法解决所谓多群体学习的问题。这使我们能够从多群体学习获得理论保障,以获得符合预测的抽样复杂性保障。我们还为等级结构群体提供一种多群体学习的新算法。在减少时使用这种算法可以提高样本复杂性保障,并简化预测结构。</s>