论文标题
NADS:神经建筑分布搜索不确定性意识
NADS: Neural Architecture Distribution Search for Uncertainty Awareness
论文作者
论文摘要
当处理来自培训数据不同的分布的测试数据时,机器学习(ML)系统通常会遇到分布式(OOD)错误。对于关键应用中的ML系统,它变得很重要,以准确量化其预测性不确定性并筛选出这些异常输入。但是,现有的OOD检测方法容易出错,甚至有时甚至为OOD样本分配了更高的可能性。与标准的学习任务不同,目前尚无良好的指导原则来设计可以准确量化不确定性的OOD检测体系结构。为了解决这些问题,我们首先寻求通过提出神经体系结构分配搜索(NADS)来确定设计不确定性感知体系结构的指导原则。 NADS搜索在给定任务上表现良好的体系结构的分布,从而使我们能够在所有不确定性感知的体系结构中识别共同的构建块。通过此公式,我们能够优化一个随机的OOD检测目标,并构建模型集合以执行OOD检测。我们执行多个OOD检测实验,并观察到我们的NAD表现有利,与15种不同测试配置中的最新方法相比,准确性提高了57%。
Machine learning (ML) systems often encounter Out-of-Distribution (OoD) errors when dealing with testing data coming from a distribution different from training data. It becomes important for ML systems in critical applications to accurately quantify its predictive uncertainty and screen out these anomalous inputs. However, existing OoD detection approaches are prone to errors and even sometimes assign higher likelihoods to OoD samples. Unlike standard learning tasks, there is currently no well established guiding principle for designing OoD detection architectures that can accurately quantify uncertainty. To address these problems, we first seek to identify guiding principles for designing uncertainty-aware architectures, by proposing Neural Architecture Distribution Search (NADS). NADS searches for a distribution of architectures that perform well on a given task, allowing us to identify common building blocks among all uncertainty-aware architectures. With this formulation, we are able to optimize a stochastic OoD detection objective and construct an ensemble of models to perform OoD detection. We perform multiple OoD detection experiments and observe that our NADS performs favorably, with up to 57% improvement in accuracy compared to state-of-the-art methods among 15 different testing configurations.