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首页> 外文期刊>International Journal of Advanced Networking and Applications >Optimal Feature Subset Selection Using Cuckoo Search On IoT Network
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Optimal Feature Subset Selection Using Cuckoo Search On IoT Network

机译:使用杜鹃搜索物联网网络的最佳特征子集选择

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摘要

The Internet of Things (IoT) became the basic axis in the information and network technology to create a smart environment. To build such an environment; it needs to use some IoT simulators such as Cooja Simulator. Cooja simulator creates an IoT environment and produces an IoT routing dataset that contains normal and malicious motes. The IoT routing dataset may have redundant and noisy features. The feature selection can affect on the performance metrics of the learning model. The feature selection can reduce complexity and over-fitting problem. There are many approaches for feature selection especially meta-heuristic algorithms such as Cuckoo search (CS). This paper presented a proposed model for feature selection that is built on using a standard cuckoo search algorithm to select near-optimal or optimal features. A proposed model may modify the CS algorithm which has implemented using Dagging with base learner Bayesian Logistic Regression (BLR). It increases the speed of the CS algorithm and improves the performance of BLR. Support Vector Machine (SVM), Deep learning, and FURIA algorithms are used as classification techniques used to evaluate the performance metrics. The results have demonstrated that the algorithm proposed is more effective and competitive in terms of performance of classification and dimensionality reduction. It achieved high accuracy that is near to 98 % and low error that is about 1.5%.
机译:事物互联网(IOT)成为信息和网络技术中的基本轴,以创建智能环境。建立这样的环境;它需要使用一些物联网模拟器,如Cooja Simulator。 Cooja Simulator创建一个IoT环境,并生成包含普通和恶意运动的IOT路由数据集。 IOT路由数据集可能具有冗余和嘈杂的功能。特征选择可能会影响学习模型的性能度量。特征选择可以减少复杂性和过度拟合问题。特征选择有许多方法,特别是杜鹃搜索(CS)等元启发式算法。本文介绍了一个建议的特征选择模型,该型号是在使用标准的杜鹃搜索算法选择近最佳或最佳功能的特征选择。建议的模型可以修改使用令人垂直的基础学习者贝叶斯逻辑回归(BLR)实现的CS算法。它提高了CS算法的速度,提高了BLR的性能。支持向量机(SVM),深度学习和FURIA算法用作用于评估性能度量的分类技术。结果表明,在分类和维度减少的性能方面,提出的算法更有效和竞争。它达到了高精度,靠近98%,低误差约为1.5%。

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