Kranzinger Christina, Venek Verena, Rieser Harald, Jungreitmayr Sonja, Ring-Dimitriou Susanne
Salzburg Research Forschungsgesellschaft mbH, Salzburg, Austria.
Department of Sport and Exercise Science, University of Salzburg, Salzburg, Austria.
JMIR Form Res. 2022 Aug 1;6(8):e30149. doi: 10.2196/30149.
Physical inactivity remains a leading risk factor for mortality worldwide. Owing to increasing sedentary behavior (activities in a reclining, seated, or lying position with low-energy expenditures), vehicle-based transport, and insufficient physical workload, the prevalence of physical activity decreases significantly with age. To promote sufficient levels of participation in physical activities, the research prototype Fit-mit-ILSE was developed with the goal of making adults aged ≥55 years physically fit and fit for the use of assistive technologies. The system combines active and assisted living technologies and smart services in the ILSE app.
The clustering of health and fitness app user types, especially in the context of active and assisted living projects, has been mainly defined by experts through 1D cluster thresholds based on app usage frequency. We aimed to investigate and present data-driven methods for clustering app user types and to identify usage patterns based on the ILSE app function Fit at home.
During the 2 phases of the field trials, ILSE app log data were collected from 165 participants. Using this data set, 2 data-driven approaches were applied for clustering to group app users who were similar to each other. First, the common approach of user-type clustering based on expert-defined thresholds was replaced by a data-driven derivation of the cluster thresholds using the Jenks natural breaks algorithm. Second, a multidimensional clustering approach using the Partitioning Around Medoids algorithm was explored to consider the detailed app usage pattern data.
Applying the Jenks clustering algorithm to the mean usage per day and clustering the users into 4 groups showed that most of the users (63/165, 38.2%) used the Fit at home function between once a week and every second day. More men were in the low usage group than women. In addition, the younger users were more often identified as moderate or high users than the older users, who were mainly classified as low users; moreover, the regional differences between Vienna and Salzburg were identified. In addition, the multidimensional approach identified 4 different user groups that differed mainly in terms of time of use, gender, and region. Overall, the younger women living in Salzburg were the users with highest average app usage.
The application of different clustering approaches showed that data-driven calculations of user groups can complement expert-based definitions, provide objective thresholds for the analysis of app usage data, and identify groups that can be targeted individually based on their specific group characteristics.
缺乏身体活动仍然是全球范围内导致死亡的主要风险因素。由于久坐行为(如斜倚、坐着或躺着进行的低能量消耗活动)增加、依赖车辆出行以及身体活动量不足,身体活动的普及率随年龄增长而显著下降。为了促进人们充分参与体育活动,研发了研究原型Fit-mit-ILSE,目标是使55岁及以上的成年人身体健康并适合使用辅助技术。该系统在ILSE应用程序中结合了主动和辅助生活技术以及智能服务。
健康和健身应用程序用户类型的聚类,特别是在主动和辅助生活项目背景下,主要由专家通过基于应用程序使用频率的一维聚类阈值来定义。我们旨在研究并展示用于聚类应用程序用户类型的数据驱动方法,并基于ILSE应用程序的“在家健身”功能识别使用模式。
在现场试验的两个阶段中,从165名参与者收集了ILSE应用程序的日志数据。使用该数据集,应用了两种数据驱动方法进行聚类,以对彼此相似的应用程序用户进行分组。首先,基于专家定义阈值的用户类型聚类的常用方法被使用詹克斯自然间断点算法的数据驱动聚类阈值推导所取代。其次,探索了使用围绕中心点划分算法的多维聚类方法,以考虑详细的应用程序使用模式数据。
将詹克斯聚类算法应用于每日平均使用量并将用户聚类为4组,结果显示大多数用户(63/165,38.2%)每周使用一次至每隔一天使用一次“在家健身”功能。低使用量组中的男性多于女性。此外,年轻用户比老年用户更常被识别为中度或高度用户,老年用户主要被归类为低使用量用户;此外,还发现了维也纳和萨尔茨堡之间的地区差异。此外,多维方法识别出4个不同的用户组,它们主要在使用时间、性别和地区方面存在差异。总体而言,居住在萨尔茨堡的年轻女性是应用程序平均使用量最高的用户。
不同聚类方法的应用表明,用户组的数据驱动计算可以补充基于专家的定义,为分析应用程序使用数据提供客观阈值,并识别可根据其特定群体特征进行单独定位的群体。