论文标题
协作推论,以进行有效的远程监视
Collaborative Inference for Efficient Remote Monitoring
论文作者
论文摘要
尽管当前的机器学习模型在广泛的应用程序中具有令人印象深刻的性能,但它们的尺寸和复杂性使它们不适合使用诸如远程监视的任务,例如在边缘设备上具有有限的存储和计算功率。在模型级别上解决此问题的一种天真方法是使用更简单的体系结构,但是这牺牲了预测准确性,并且不适合监视需要准确检测不良事件发作的应用程序。在本文中,我们通过将预测模型分解为简单函数的总和,作为一个本地监视工具的简单函数的总和,并提出了一个要在服务器上评估的复杂校正术语的简单函数的总和。在后者上施加了标志要求,以确保本地监视功能是安全的,因为它可以有效地用作预警系统。我们的分析量化了模型复杂性和性能之间的权衡,并作为建筑设计的指导。我们在一系列监视实验上验证了我们提出的框架,在该框架中,我们成功地以显着降低的复杂性来学习监测模型,从而最小化违反了安全要求。更广泛地说,我们的框架对于与假阳性相比,假否定性明显更高的应用程序中的学习分类器很有用。
While current machine learning models have impressive performance over a wide range of applications, their large size and complexity render them unsuitable for tasks such as remote monitoring on edge devices with limited storage and computational power. A naive approach to resolve this on the model level is to use simpler architectures, but this sacrifices prediction accuracy and is unsuitable for monitoring applications requiring accurate detection of the onset of adverse events. In this paper, we propose an alternative solution to this problem by decomposing the predictive model as the sum of a simple function which serves as a local monitoring tool, and a complex correction term to be evaluated on the server. A sign requirement is imposed on the latter to ensure that the local monitoring function is safe, in the sense that it can effectively serve as an early warning system. Our analysis quantifies the trade-offs between model complexity and performance, and serves as a guidance for architecture design. We validate our proposed framework on a series of monitoring experiments, where we succeed at learning monitoring models with significantly reduced complexity that minimally violate the safety requirement. More broadly, our framework is useful for learning classifiers in applications where false negatives are significantly more costly compared to false positives.