When deploying machine learning models in high-stakes robotics applications, the ability to detect unsafe situations is crucial. Early warning systems can provide alerts when an unsafe situation is imminent (in the absence of corrective action). To reliably improve safety, these warning systems should have a provable false negative rate; i.e. of the situations that are unsafe, fewer than $\epsilon$ will occur without an alert. In this work, we present a framework that combines a statistical inference technique known as conformal prediction with a simulator of robot/environment dynamics, in order to tune warning systems to provably achieve an $\epsilon$ false negative rate using as few as $1/\epsilon$ data points. We apply our framework to a driver warning system and a robotic grasping application, and empirically demonstrate guaranteed false negative rate and low false detection (positive) rate using very little data.
翻译:当在高占用机器人应用中部署机器学习模型时,发现不安全情况的能力至关重要。预警系统可以在不安全情况迫在眉睫时(在没有纠正行动的情况下)提供警报。为了可靠地改善安全性,这些预警系统应当有一个可证实的假负率;也就是说,在不安全的情况下,将出现低于美元而没有警报的情况。在这项工作中,我们提出了一个框架,将被称为符合预测的统计推论技术与机器人/环境动态模拟技术结合起来,以便调整预警系统,利用极少的1美元/欧元数据点,实现可辨别的美元假负率。我们将我们的框架应用于司机警报系统和机器人捕捉应用,并用极少的数据从经验上证明保证的假负率和低假检测(正)率。