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   a new algorithm for high averageutility itemset mining  
   
نویسنده soltani a. ,soltani m.
منبع journal of ai and data mining - 2019 - دوره : 7 - شماره : 4 - صفحه:537 -550
چکیده    High utility itemset mining (huim) is a new emerging field in data mining which has gained growing interest due to its various applications. the goal of this problem is to discover all itemsets whose utility exceeds minimum threshold. the basic huim problem does not consider length of itemsets in its utility measurement and utility values tend to become higher for itemsets containing more items. hence, huim algorithms discover a huge enormous number of long patterns. high averageutility itemset mining (hauim) is a variation of huim that selects patterns by considering both their utilities and lengths. in the last decades, several algorithms have been introduced to mine high averageutility itemsets. to speed up the hauim process, here a new algorithm is proposed which uses a new list structure and pruning strategy. several experiments performed on real and synthetic datasets show that the proposed algorithm outperforms the stateoftheart hauim algorithms in terms of runtime and memory consumption.
کلیدواژه data mining ,frequent pattern ,utility ,high averageutility itemset
آدرس university of bojnord, department. of computer engineering, iran, quchan university of technology, department. of computer engineering, iran
پست الکترونیکی m.soltani@qiet.ac.ir
 
     
   
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