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An AdaBoost-modified classifier using stochastic diffusion search model for data optimization in Internet of Things

机译:使用随机扩散搜索模型的Adaboost修改分类器进行数据优化中的数据优化

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The Internet of Things (IoT) depicts the network that contains the objects or the "things" that have been embedded along with the network connectivity, the sensors, electronics or the software that enables the objects to collect and exchange data. Wireless sensor networks (WSNs) connect different sensors/things to the Internet by means of a gateway which interfaces the concept of the WSN to the Internet. They have a certain trait that collects all sensed data and duly forwards it to a gateway using a one-way protocol. Huge amount of either unstructured or semi-structured data collected by the WSN is transmitted to IoT for processing. To improve the efficacy of the storing and processing of data, it is required to classify the data. Genetic algorithm is used to find optimal solutions in IoT. Stochastic diffusion search is a heuristic algorithm which has a robust mathematical model and is distributed. This work proposed a Stochastic AdaBoost algorithm for efficient classification of data obtained from WSN and IoT network.
机译:事物互联网(IOT)描绘了包含已经嵌入的对象或“东西”以及支持对象来收集和交换数据的软件的对象或“事物”的网络。无线传感器网络(WSN)通过将WSN概念与Internet接触,将不同的传感器/物体连接到Internet。它们具有一定的特质,收集所有感测数据,并使用单向协议将其正式转发到网关。由WSN收集的大量非结构化或半结构化数据传输到IOT进行处理。为了提高数据的存储和处理的功效,需要对数据进行分类。遗传算法用于在IOT中找到最佳解决方案。随机扩散搜索是一种具有稳健的数学模型的启发式算法。这项工作提出了一种随机Adaboost算法,用于高效分类从WSN和IOT网络获得的数据。

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