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CRAFFT: an activity prediction model based on Bayesian networks

机译:CRAFFT:基于贝叶斯网络的活动预测模型

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Recent advances in the areas of pervasive computing, data mining, and machine learning offer unique opportunities to provide health monitoring and assistance for individuals facing difficulties to live independently in their homes. Several components have to work together to provide health monitoring for smart home residents including, but not limited to, activity recognition, activity discovery, activity prediction, and prompting system. Compared to the significant research done to discover and recognize activities, less attention has been given to predict the future activities that the resident is likely to perform. Activity prediction components can play a major role in design of a smart home. For instance, by taking advantage of an activity prediction module, a smart home can learn context-aware rules to prompt individuals to initiate important activities. In this paper, we propose an activity prediction model using Bayesian networks together with a novel two-step inference process to predict both the next activity features and the next activity label. We also propose an approach to predict the start time of the next activity which is based on modeling the relative start time of the predicted activity using the continuous normal distribution and outlier detection. To validate our proposed models, we used real data collected from physical smart environments.
机译:普适计算,数据挖掘和机器学习领域的最新进展为难于独立生活的个人提供健康监测和帮助的独特机会。多个组件必须协同工作才能为智能家居居民提供健康监控,包括但不限于活动识别,活动发现,活动预测和提示系统。与发现和识别活动的重要研究相比,预测居民可能进行的未来活动的关注较少。活动预测组件可以在智能家居设计中发挥重要作用。例如,通过利用活动预测模块,智能家居可以学习上下文感知规则,以提示个人发起重要活动。在本文中,我们提出了一个使用贝叶斯网络的活动预测模型,以及一个新颖的两步推理过程来预测下一个活动特征和下一个活动标签。我们还提出了一种预测下一个活动的开始时间的方法,该方法基于使用连续正态分布和离群值检测对预测活动的相对开始时间进行建模。为了验证我们提出的模型,我们使用了从物理智能环境收集的真实数据。

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