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Incremental Learning of Daily Routines as Workflows in a Smart Home Environment

机译:在智能家居环境中作为工作流的日常例行增量学习

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Smart home environments should proactively support users in their activities, anticipating their needs according to their preferences. Understanding what the user is doing in the environment is important for adapting the environment's behavior, as well as for identifying situations that could be problematic for the user. Enabling the environment to exploit models of the user's most common behaviors is an important step toward this objective. In particular, models of the daily routines of a user can be exploited not only for predicting his/her needs, but also for comparing the actual situation at a given moment with the expected one, in order to detect anomalies in his/her behavior. While manually setting up process models in business and factory environments may be cost-effective, building models of the processes involved in people's everyday life is infeasible. This fact fully justifies the interest of the Ambient Intelligence community in automatically learning such models from examples of actual behavior. Incremental adaptation of the models and the ability to express/learn complex conditions on the involved tasks are also desirable. This article describes how process mining can be used for learning users' daily routines from a dataset of annotated sensor data. The solution that we propose relies on a First-Order Logic learning approach. Indeed, First-Order Logic provides a single, comprehensive and powerful framework for supporting all the previously mentioned features. Our experiments, performed both on a proprietary toy dataset and on publicly available real-world ones, indicate that this approach is efficient and effective for learning and modeling daily routines in Smart Home Environments.
机译:智能家居环境应主动支持用户的活动,并根据他们的喜好预测他们的需求。了解用户在环境中的行为对于适应环境的行为以及确定可能对用户造成问题的情况很重要。使环境能够利用用户最常见行为的模型是朝着这一目标迈出的重要一步。特别地,不仅可以用于预测用户需求的模型,而且可以用于将给定时刻的实际情况与预期时刻进行比较,以检测其行为异常。虽然在业务和工厂环境中手动设置流程模型可能具有成本效益,但建立与人们日常生活相关的流程模型并不可行。这一事实充分证明了环境智能社区有兴趣从实际行为示例中自动学习此类模型。还需要模型的增量适应以及在涉及的任务上表达/学习复杂条件的能力。本文介绍了如何将过程挖掘用于从带注释的传感器数据集中学习用户的日常工作。我们提出的解决方案依赖于一阶逻辑学习方法。实际上,一阶逻辑提供了一个单一,全面而强大的框架来支持所有前面提到的功能。我们在专有玩具数据集和可公开获得的真实数据集上进行的实验表明,这种方法对于学习和建模智能家居环境中的日常活动非常有效。

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