Abstract

Identification of anomaly and malicious traffic in the Internet of things (IoT) network is essential for IoT security. Tracking and blocking unwanted traffic flows in the IoT network is required to design a framework for the identification of attacks more accurately, quickly, and with less complexity. Many machine learning (ML) algorithms proved their efficiency to detect intrusion in IoT networks. But this ML algorithm suffers many misclassification problems due to inappropriate and irrelevant feature size. In this paper, an in-depth study is presented to address such issues. We have presented lightweight low-cost feature selection IoT intrusion detection techniques with low complexity and high accuracy due to their low computational time. A novel feature selection technique was proposed with the integration of rank-based chi-square, Pearson correlation, and score correlation to extract relevant features out of all available features from the dataset. Then, feature entropy estimation was applied to validate the relationship among all extracted features to identify malicious traffic in IoT networks. Finally, an extreme gradient ensemble boosting approach was used to classify the features in relevant attack types. The simulation is performed on three datasets, i.e., NSL-KDD, USNW-NB15, and CCIDS2017, and results are presented on different test sets. It was observed that on the NSL-KDD dataset, accuracy was approx. 97.48%. Similarly, the accuracy of USNW-NB15 and CCIDS2017 was approx. 99.96% and 99.93%, respectively. Along with that, state-of-the-art comparison is also presented with existing techniques.

Highlights

  • Introduction eInternet of things (IoT) is the new era of technology in the digital world

  • We have presented lightweight low-cost feature selection IoT intrusion detection techniques with low complexity and high accuracy due to their low computational time

  • A novel feature selection technique was proposed with the integration of rank-based chi-square, Pearson correlation, and score correlation to extract relevant features out of all available features from the dataset. en, feature entropy estimation was applied to validate the relationship among all extracted features to identify malicious traffic in IoT networks

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Summary

Research Article

Feature Entropy Estimation (FEE) for Malicious IoT Traffic and Detection Using Machine Learning. We have presented lightweight low-cost feature selection IoT intrusion detection techniques with low complexity and high accuracy due to their low computational time. E process is the feature selection in which the development of machine learning is based on an intrusion detection system and IoT. Several experiments were done in this work with different traffic intensities, and it is proved that packet arrival rate feature and support vector machine-based classifier are sufficient to detect the intrusion in the network as compared to other classifiers like NN, k-NN, and DT. E proposed algorithm is an assessment of correlations with an entropy feature estimate to solve the problem by a specific machine learning (ML) algorithm [21] of effective intrusion detection selection. Reduction of redundant data and normalization is an important step. is results in balanced data formation within a specified range. e

Communication or network layer
Extreme Gradient boosting
Results and Discussion
Conclusion

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