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Predicting Daily Physical Activity in a Lifestyle Intervention Program

机译:预测生活方式干预计划中的日常体育活动

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The growing number of people adopting a sedentary lifestyle these days creates a serious need for effective physical activity promotion programs. Often, these programs monitor activity, provide feedback about activity and offer coaching to increase activity. Some programs rely on a human coach who creates an activity goal that is tailored to the characteristics of a participant. Throughout the program, the coach motivates the participant to reach his personal goal or adapt the goal, if needed. Both the timing and the content of the coaching are important for the coaching. Insights on the near future state on, for instance, behaviour and motivation of a participant can be helpful to realize an effective proactive coaching style that is personalized in terms of timing and content. As a first step towards providing these insights to a coach, this chapter discusses results of a study on predicting daily physical activity level (PAL) data from past data of participants in a lifestyle intervention program. A mobile body-worn activity monitor with a built-in triaxial accelerometer was used to record PAL data of a participant for a period of 13 weeks. Predicting future PAL data for all days in a given period was done by employing autoregressive integrated moving average (ARIMA) models on the PAL data from days in the period before. By using a newly proposed categorized-ARIMA (CARIMA) prediction method, we achieved a large reduction in computation time without a significant loss in prediction accuracy in comparison with traditional ARIMA models. In CARIMA, PAL data are categorized as stationary, trend or seasonal data by assessing their autocorrelation functions. Then, an ARIMA model that is most appropriate to these three categories is automatically selected based on an objective penalty function criterion. The results show that our CARIMA method performs well in terms of PAL prediction accuracy (~9% mean absolute percentage error), model parsimony and robustness.
机译:这些天采用久坐生活方式的越来越多的人造成了有效的身体活动促销计划的严重需求。通常,这些程序监控活动,提供有关活动的反馈,并提供辅导以增加活动。一些课程依赖于创建活动目标的人教练,这些目标是针对参与者的特征而定制的。在整个方案中,如果需要,教练激励参与者达到个人目标或适应目标。辅导的时序和内容都对教练很重要。例如,参与者的行为和动机的近期国家的见解可能有助于实现在时间和内容方面个性化的有效主动教练的风格。作为向教练提供这些见解的第一步,本章讨论了从参与者在生活方式干预计划中预测日常身体活动水平(PAL)数据的研究结果。具有内置三轴加速度计的移动体磨损活动监视器用于记录参与者的PAL数据,为13周。通过在前一段时间内从PAL数据上采用自回归综合移动平均(ARIMA)模型来预测给定期的所有日期的未来PAL数据。通过使用新提出的分类 - ARIMA(CARIMA)预测方法,我们在与传统的ARIMA模型相比,我们实现了计算时间的大幅减少,而无需预测精度的显着损失。在卡西玛,PAL数据通过评估其自相关函数来分类为静止,趋势或季节性数据。然后,基于客观的惩罚函数标准自动选择最适合这三个类别的ARIMA模型。结果表明,在PAL预测准确性(〜9%的绝对百分比误差),模型定义和鲁棒性方面,我们的卡西玛方法表现良好。

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