Ugr'16: a new dataset for the evaluation of cyclostationarity-based network IDSs
    		            - 		
                Gabriel Maciá-Fernández; José Camacho; Roberto Magán-Carrión; Pedro García-Teodoro; Roberto Therón Sánchez    
            
 	
	    		                - Abstract: 
 
		- The evaluation of algorithms and techniques to implement intrusion detection systems heavily rely on the existence of well designed datasets. In the last years, a lot of efforts have been done towards building these datasets. Yet, there is still room to improve. In this paper, a comprehensive review of existing datasets is first done, making emphasis on their main shortcomings. Then, we present a new dataset that is built with real traffic and up-to-date attacks. The main advantage of this dataset over previous ones is its usefulness for evaluating IDSs that consider long-term evolution and traffic periodicity. Models that consider differences in daytime/night or weekdays/weekends can also be trained and evaluated with it. We discuss all the requirements for a modern IDS evaluation dataset and analyze how the one presented here meets the different needs.
 	
			
            - Research areas: 
 
            
			
			- Year: 
 
	- 2018
 
		- Type of Publication: 
 
	- Article
 
				
		- Keywords: 
 		
		- dataset; IDS; network attacks; security
 
		
		- Journal: 
 		
	- Computer & Security
 
	- Volume: 
 
	- 73
 
	- Pages: 
 
	- 411-424
 
	- Month: 
 		
	- November
 
	- ISSN: 
 		
	- 0167-4048
 
	
						
						
                
		
		
		
		
			
	            - DOI: 
 
            - 10.1016/j.cose.2017.11.004
 
	                
	
			
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