In this paper we introduce a novel algorithm called Iterative Section Reduction (ISR) to automatically identify sub-intervals of spatiotemporal time series that are predictive of a target classification task. Specifically, using data collected from a driving simulator study, we identify which spatial regions (dubbed "sections") along the simulated routes tend to manifest driving behaviors that are predictive of the presence of Attention Deficit Hyperactivity Disorder (ADHD). Identifying these sections is important for two main reasons: (1) to improve predictive accuracy of the trained models by filtering out non-predictive time series sub-intervals, and (2) to gain insights into which on-road scenarios (dubbed events) elicit distinctly different driving behaviors from patients undergoing treatment for ADHD versus those that are not. Our experimental results show both improved performance over prior efforts (+10% accuracy) and good alignment between the predictive sections identified and scripted on-road events in the simulator (negotiating turns and curves).
翻译:在本文中,我们引入了一种叫“迭代分节减少”的新奇算法,以自动识别预测目标分类任务目标的时空时间序列的子间替值。具体地说,我们利用从驱动模拟器研究中收集的数据,确定在模拟路径沿线的哪些空间区域(“细带”)往往表现出预示着注意力不足多动障碍(ADHD)存在的驱动行为。确定这些部分之所以重要,主要有两个原因:(1) 通过过滤非预测性时间序列次间替器,提高经过培训的模型的预测准确性;(2) 通过过滤非预测性时间序列次间替器,了解在轨情景(光圈事件)中正在接受ADHD治疗的病人的驱动行为与非模拟路径的驱动行为的不同。我们的实验结果显示,先前努力(+10%的准确度)的性能有所改进,以及模拟器中查明的预测部分与编程事件(谈判旋转和曲线)之间的良好协调。