Multi-Agent Web Recommendations
    
  
 
 
  
  
    
    
        Multi-Agent Web Recommendations
    
  
Date
    
    
        2014
    
  
Authors
  Neto,J
  Jorge Morais
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Abstract
    
    
        Due to the large amount of pages in Websites it is important to collect knowledge about users' previous visits in order to provide patterns that allow the customization of the Website. In previous work we proposed a multi-agent approach using agents with two different algorithms (associative rules and collaborative filtering) and showed the results of the offline tests. Both algorithms are incremental and work with binary data. In this paper we present the results of experiments held online. Results show that this multi-agent approach combining different algorithms is capable of improving user's satisfaction.