A Safeguard Agent for Intelligent Health-care Environments | |
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Author | |
Abstract |
Intelligent environments rely heavily on the Internet of Things, which can be targeted by malicious attacks. Therefore, the autonomous capabilities of agents in intelligent health-care environments, and the agents’ characteristics (accuracy, reliability, efficiency and responsiveness), should be exploited to devise an autonomous intelligent agent that can safeguard the entire environment from malicious attacks. Hence, this paper contributes to achieving this aim by selecting the eight most valuable features out of 50 features from the adopted dataset using the Chi-squared test. Then, three wellknown machine learning classifiers (i.e. naive Bayes, random forest and logistic regression) are compared in classifying malicious attacks from non-attacks in an intelligent health-care environment. The highest achieved classification accuracy was for the random forest classifier (99.92\%). |
Year of Publication |
2023
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Date Published |
feb
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Publisher |
IEEE
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Conference Location |
Hail, Saudi Arabia
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ISBN Number |
9798350347050
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URL |
https://ieeexplore.ieee.org/document/10087746/
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DOI |
10.1109/ICSCA57840.2023.10087746
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