论文标题
通过基于风险的积极学习来改善决策:概率歧视分类器
Improving decision-making via risk-based active learning: Probabilistic discriminative classifiers
论文作者
论文摘要
获得对结构操作和维护的明智决定的能力,为实施结构健康监测(SHM)系统提供了动力。但是,与受监视系统的健康状态相对应的测量数据的描述性标签通常不可用。此问题限制了完全监督的机器学习范例的适用性,用于开发用于SHM系统决策支持的统计分类器。解决此问题的一种方法是基于风险的积极学习。在这种方法中,根据初始数据点的完美信息的预期值来指导数据标签查询。对于基于风险的SHM中的主动学习,可以根据维护决策过程评估信息的价值,并且数据标签查询对应于检查结构以确定其健康状态的检查。 在SHM的背景下,仅考虑生成分类器的基于风险的积极学习。当前的论文证明了使用替代类型的分类器 - 判别模型的几个优点。在SHM决策支持的背景下,使用Z24桥数据集作为案例研究,表明歧视性分类器具有好处,包括改善了对抽样偏见的鲁棒性以及减少结构检查的支出。
Gaining the ability to make informed decisions on operation and maintenance of structures provides motivation for the implementation of structural health monitoring (SHM) systems. However, descriptive labels for measured data corresponding to health-states of the monitored system are often unavailable. This issue limits the applicability of fully-supervised machine learning paradigms for the development of statistical classifiers to be used in decision-support in SHM systems. One approach to dealing with this problem is risk-based active learning. In such an approach, data-label querying is guided according to the expected value of perfect information for incipient data points. For risk-based active learning in SHM, the value of information is evaluated with respect to a maintenance decision process, and the data-label querying corresponds to the inspection of a structure to determine its health state. In the context of SHM, risk-based active learning has only been considered for generative classifiers. The current paper demonstrates several advantages of using an alternative type of classifier -- discriminative models. Using the Z24 Bridge dataset as a case study, it is shown that discriminative classifiers have benefits, in the context of SHM decision-support, including improved robustness to sampling bias, and reduced expenditure on structural inspections.