论文标题
由于神经分类而导致的检测极限和定量不确定性降低
Reduction of detection limit and quantification uncertainty due to interferent by neural classification with abstention
论文作者
论文摘要
物理科学中的许多测量值都可以作为计数实验进行,其中物理现象的发生数量可以使现象来源的流行率。通常,检测物理现象(称为信号)很难与自然发生的现象(称为背景)区分开。在这种情况下,可以使用分类器对信号事件进行歧视,它们的范围从简单的,基于阈值的分类器到复杂的神经网络。这些分类器通常经过训练和验证以获得最佳精度,但是我们表明,最佳精度分类器通常与提供最低检测极限的分类器不一致,也不是最低的定量不确定性。我们提出了基于分类器的计数实验案例中检测极限和定量不确定性的推导。我们还提出了一种新颖的弃用机制,以最大程度地减少检测极限或定量不确定性\ emph {a posteriori}。我们在物理科学的两个数据集上说明了该方法,该方法将AR-37和AR-39放射性衰减与非放射性事件相比,以气体比例计数器区分非放射性事件,并在无机闪烁剂中与光子中的中子区分开中子,并报告其结果。
Many measurements in the physical sciences can be cast as counting experiments, where the number of occurrences of a physical phenomenon informs the prevalence of the phenomenon's source. Often, detection of the physical phenomenon (termed signal) is difficult to distinguish from naturally occurring phenomena (termed background). In this case, the discrimination of signal events from background can be performed using classifiers, and they may range from simple, threshold-based classifiers to sophisticated neural networks. These classifiers are often trained and validated to obtain optimal accuracy, however we show that the optimal accuracy classifier does not generally coincide with a classifier that provides the lowest detection limit, nor the lowest quantification uncertainty. We present a derivation of the detection limit and quantification uncertainty in the classifier-based counting experiment case. We also present a novel abstention mechanism to minimize the detection limit or quantification uncertainty \emph{a posteriori}. We illustrate the method on two data sets from the physical sciences, discriminating Ar-37 and Ar-39 radioactive decay from non-radioactive events in a gas proportional counter, and discriminating neutrons from photons in an inorganic scintillator and report results therefrom.