In this work, we apply information theory inspired methods to quantify changes in daily activity patterns. We use in-home movement monitoring data and show how they can help indicate the occurrence of healthcare-related events. Three different types of entropy measures namely Shannon's entropy, entropy rates for Markov chains, and entropy production rate have been utilised. The measures are evaluated on a large-scale in-home monitoring dataset that has been collected within our dementia care clinical study. The study uses Internet of Things (IoT) enabled solutions for continuous monitoring of in-home activity, sleep, and physiology to develop care and early intervention solutions to support people living with dementia (PLWD) in their own homes. Our main goal is to show the applicability of the entropy measures to time-series activity data analysis and to use the extracted measures as new engineered features that can be fed into inference and analysis models. The results of our experiments show that in most cases the combination of these measures can indicate the occurrence of healthcare-related events. We also find that different participants with the same events may have different measures based on one entropy measure. So using a combination of these measures in an inference model will be more effective than any of the single measures.
翻译:在这项工作中,我们运用信息理论激发的方法来量化日常活动模式的变化。我们使用家庭运动监测数据,并表明它们如何能帮助显示与保健有关的事件的发生。我们使用了三种不同类型的昆虫措施,即香农的昆虫、马尔科夫链条的酶率和酶产率。这些措施是在我们痴呆症护理临床研究中收集的大规模家庭监测数据集上评估的。研究利用物联网为持续监测家庭活动、睡眠和生理学提供解决方案,以制定护理和早期干预解决方案,支持患有痴呆症的人在他们自己的家中生活。我们的主要目标是显示酶措施在时间序列活动数据分析中的可适用性,并将所提取的措施用作可以纳入推断和分析模型的新的设计特征。我们的实验结果表明,在大多数情况下,这些措施的结合可以显示与保健有关的事件的发生情况。我们还发现,不同事件的不同参与者在一种措施中,使用一种措施的组合,使用一种措施的模型的组合,将比一种措施的模型的组合更为有效。使用一种措施。