Comparative analysis of machine learning models for multiclass anomaly detection in IoT network traffic using the RT-IoT2022 dataset
			
	
 
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				Faculty of Electrical and Computer Engineering, Rzeszów University of Technology, 35-959 Rzeszów, al. Powstańców Warszawy 12, Poland
				 
			 
										
				
				
		
		 
			
			
		
		
		
		
		
		
	
							
					    		
    			 
    			
    				    					Autor do korespondencji
    					    				    				
    					Paweł  Dymora   
    					Faculty of Electrical and Computer Engineering, Rzeszów University of Technology, 35-959 Rzeszów, al. Powstańców Warszawy 12, Poland
    				
 
    			
				 
    			 
    		 		
			
																						 
		
	 
		
 
 
 
 
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Nowadays, the development of technology, especially in the area of the Internet of Things (IoT), is proceeding at a dizzying pace. With this development comes an increasing number of threats that can affect IoT network users. Network traffic is increasingly becoming the target of various attacks, and the consequences of these attacks depend on the type of attack and the attacker's objectives. The purpose of the paper is to analyze the application of machine learning and artificial intelligence algorithms to analyze data for detecting anomalies and threats in IoT networks. The paper compares less complex machine learning algorithms with more advanced artificial intelligence methods in terms of performance and prediction accuracy. The research used the “RTIoT2022” 2022 dataset, which enabled the identification of specific patterns of attacks on IoT networks and the evaluation of the effectiveness of selected detection methods.