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The Efficient Data Classification using SVMcW for IoT Data Monitoring and Sensing

机译:使用SVMcW进行有效的数据分类以进行IoT数据监控和传感

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The developing of the wireless network supports the high transmission data rate and low latency for UEs. Hence, extensive data and application are the main reason for enhancing the usage of IoT. With the IoT device increasing; it means that more data need to be processed and analyzed. In order to reduce the process time and power consumption, we proposed the method of the smart monitor to the director the IoT data, and the Support Vector Machine (SVM) to classify data. By this way, the data process can achieve real-time processing. Besides, to solve the disadvantage of SVM and reduce the training time, we involved the concept of weight in the feature of SVM. Finally, the simulation results show that our method can reduce the training time and guarantee the classifier accuracy.
机译:无线网络的发展支持UE的高传输数据速率和低等待时间。因此,广泛的数据和应用程序是增强物联网使用的主要原因。随着物联网设备的增加;这意味着需要处理和分析更多数据。为了减少处理时间和功耗,我们提出了智能监控器向物联网数据导向的方法,以及支持向量机(SVM)对数据进行分类的方法。通过这种方式,数据处理可以实现实时处理。此外,为了解决支持向量机的缺点并减少训练时间,我们在支持向量机的功能中引入了权重的概念。最后,仿真结果表明,该方法可以减少训练时间,保证分类器的准确性。

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