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Predicting the Health Condition of mHealth App Users with Large Differences in the Number of Recorded Observations - Where to Learn from?

机译:预测录制观测数量大的MHEATH APP用户的健康状况 - 从哪里学习?

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Some mHealth apps record user activity continuously and unobtrusively, while other apps rely by nature on user engagement and self-discipline: users are asked to enter data that cannot be assessed otherwise, e.g., on how they feel and what non-measurable symptoms they have. Over time, this leads to substantial differences in the length of the time series of recordings for the different users. In this study, we propose two algorithms for wellbeing-prediction from such time series, and we compare their performance on the users of a pilot study on diabetic patients - with time series length varying between 8 and 87 recordings. Our first approach learns a model from the few users, on which many recordings are available, and applies this model to predict the 2nd, 3rd, and so forth recording of users newly joining the mHealth platform. Our second approach rather exploits the similarity among the first few recordings of newly arriving users. Our results for the first approach indicate that the target variable for users who use the app for long are not predictive for users who use the app only for a short time. Our results for the second approach indicate that few initial recordings suffice to inform the predictive model and improve performance considerably.
机译:一些MHECHEATH应用程序持续和不受欢迎的用户活动,而其他应用依赖于用户参与和自律的自然:要求用户输入无法评估的数据,例如他们的感受以及他们的感觉如何以及他们所拥有的任何不可衡量的症状。随着时间的推移,这导致不同用户录制的时间序列长度的大量差异。在这项研究中,我们向这种时间序列提出了两种用于幸福预测的良好预测算法,我们对糖尿病患者的试验研究的用户的表现进行了比较 - 时间序列长度在8到87张记录之间变化。我们的第一个方法从少数用户学习一个模型,其中有许多录音可以使用,并应用此模型来预测新加入MHECHEATH平台的用户的第二个,第3次,依赖录制。我们的第二种方法宁可利用新到达用户的前几个记录中的相似性。我们的第一种方法的结果表明,使用应用程序的用户的目标变量不是对仅在短时间使用该应用的用户的预测性。我们的第二种方法的结果表明,很少有初始记录足以通知预测模型并大大提高性能。

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