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EEM: Evolutionary ensembles model for activity recognition in Smart Homes

机译:EEM:用于智能家居中活动识别的进化集成模型

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摘要

Activity recognition requires further research to enable a multitude of human-centric applications in the smart home environment. Currently, the major challenges in activity recognition include the domination of major activities over minor activities, their non-deterministic nature and the lack of availability of human-understandable output. In this paper, we introduce a novel Evolutionary Ensembles Model (EEM) that values both minor and major activities by processing each of them independently. It is based on a Genetic Algorithm (GA) to handle the non-deterministic nature of activities. Our evolutionary ensemble learner generates a human-understandable rule profile to ensure a certain level of confidence for performed activities. To evaluate the EEM, we performed experiments on three different real world datasets. Our experiments show significant improvement of 0.6 % to 0.28 % in the F-measures of recognized activities compared to existing counterparts. It is expected that EEM would be a practical solution for the activity recognition problem due to its understandable output and improved accuracy.
机译:活动识别需要进一步的研究,以在智能家居环境中实现多种以人为中心的应用程序。当前,活动认可方面的主要挑战包括:主要活动要比次要活动支配,它们的不确定性和缺乏人类可理解的产出。在本文中,我们介绍了一种新颖的进化合奏模型(EEM),该模型通过分别处理每个活动来评估次要活动和主要活动。它基于遗传算法(GA)来处理活动的不确定性。我们的进化合奏学习者会生成人类可理解的规则配置文件,以确保对执行的活动有一定程度的信心。为了评估EEM,我们对三个不同的现实世界数据集进行了实验。我们的实验显示,与现有同类产品相比,公认活动的F值显着提高了0.6%至0.28%。可以预期的是,由于EEM具有可理解的输出和提高的准确性,它将成为活动识别问题的实用解决方案。

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