Conformal prediction is a learning framework controlling prediction coverage of prediction sets, which can be built on any learning algorithm for point prediction. This work proposes a learning framework named conformal loss-controlling prediction, which extends conformal prediction to the situation where the value of a loss function needs to be controlled. Different from existing works about risk-controlling prediction sets and conformal risk control with the purpose of controlling the expected values of loss functions, the proposed approach in this paper focuses on the loss for any test object, which is an extension of conformal prediction from miscoverage loss to some general loss. The controlling guarantee is proved under the assumption of exchangeability of data in finite-sample cases and the framework is tested empirically for classification with a class-varying loss and statistical postprocessing of numerical weather forecasting applications, which are introduced as point-wise classification and point-wise regression problems. All theoretical analysis and experimental results confirm the effectiveness of our loss-controlling approach.
翻译:非正规预测是一个控制预测数据集的预测覆盖范围的学习框架,可以任何点预测的学习算法为基础。这项工作提议了一个名为一致控制损失预测的学习框架,将一致预测扩大到需要控制损失功能价值的情况。不同于关于风险控制预测数据集和符合风险控制目的控制损失功能预期值的现有工作,本文件中的拟议方法侧重于任何试验对象的损失,即从错误覆盖损失到某些一般损失的一致预测。控制担保在有限抽样案例中数据的可交换性假设下得到证明,该框架经过经验测试,以便分类为等级变化损失,并对数字天气预报应用进行统计后处理,这些应用是作为点性分类和点向回归问题引入的。所有理论分析和实验结果都证实了我们控制损失方法的有效性。