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Analysis of Eight Data Mining Algorithms for Smarter Internet of Things (IoT)

机译:智慧物联网(IoT)的八种数据挖掘算法分析

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Internet of Things (IoT) is set to revolutionize all aspects of our lives. The number of objects connected to IoT is expected to reach 50 billion by 2020, giving rise to an enormous amounts of valuable data. The data collected from the IoT devices will be used to understand and control complex environments around us, enabling better decision making, greater automation, higher efficiencies, productivity, accuracy, and wealth generation. Data mining and other artificial intelligence methods would play a critical role in creating smarter IoTs, albeit with many challenges. In this paper, we examine the applicability of eight well-known data mining algorithms for IoT data. These include, among others, the deep learning artificial neural networks (DLANNs), which build a feed forward multi-layer artificial neural network (ANN) for modelling high-level data abstractions. Our preliminary results on three real IoT datasets show that C4.5 and C5.0 have better accuracy, are memory efficient and have relatively higher processing speeds. ANNs and DLANNs can provide highly accurate results but are computationally expensive.
机译:物联网(IoT)旨在彻底改变我们生活的方方面面。到2020年,连接到物联网的对象数量预计将达到500亿,从而产生大量有价值的数据。从物联网设备收集的数据将用于理解和控制我们周围的复杂环境,从而实现更好的决策,更高的自动化,更高的效率,生产率,准确性和财富创造。尽管面临许多挑战,数据挖掘和其他人工智能方法在创建更智能的物联网中将发挥关键作用。在本文中,我们研究了八种著名的数据挖掘算法在物联网数据中的适用性。其中包括深度学习人工神经网络(DLANN),它构建了用于建模高级数据抽象的前馈多层人工神经网络(ANN)。我们对三个真实的物联网数据集的初步结果表明,C4.5和C5.0的准确性更高,内存效率更高,处理速度也相对更高。人工神经网络和DLANN可以提供高度准确的结果,但计算量大。

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