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An ODT-based abstraction for mining closed sequential temporal patterns in IoT-cloud smart homes

机译:基于OTT的抽象,用于挖掘IOT-Cloud智能家庭中的闭合顺序时间模式

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摘要

Due to the large amount of usage data collected from smart home appliances in an IoT-cloud environment, efficient mining techniques are of great need to capture the behavioral patterns. Existing mining algorithms are time-consuming and error prone as the amount of data is increasing rapidly. In this paper, we propose an abstraction approach to model temporal data based on an ordered decision tree (ODT) and spatiotemporal characteristics of usage data for IoT-cloud paradigm. The contribution of this research is to provide an efficient representation in terms of average length of patterns, while preserving the spatiotemporal characteristics of original data. We performed extensive experiments on synthetic data to report the performance and provide a comparison with state-of-the-art algorithms to prove the correctness of the proposed technique, even at a low-level of abstraction. The results indicate that the proposed methodology outperform existing techniques due to the inherited power of the ODT temporal structure.
机译:由于IOT云环境中的智能家电收集量的大量使用量,有效的采矿技术很大捕获行为模式。现有的挖掘算法是耗时的,并且易于出错,因为数据量迅速增加。在本文中,我们提出了一种基于有序决策树(ODT)和用于IOT-Cloud范例的使用数据的时空特征来模拟时间数据的抽象方法。该研究的贡献是在平均模式长度方面提供有效的表示,同时保留原始数据的时空特性。我们对合成数据进行了广泛的实验,以报告性能并提供与最先进的算法的比较,以证明所提出的技术的正确性,即使在低水平的抽象中也是如此。结果表明,由于ODT时间结构的遗传功能,所提出的方法优于现有的技术。

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