GenMax: An Efficient Algorithm for Mining Maximal Frequent Itemsets
作者:Karam Gouda, Mohammed J. Zaki
摘要
We present GenMax, a backtrack search based algorithm for mining maximal frequent itemsets. GenMax uses a number of optimizations to prune the search space. It uses a novel technique called progressive focusing to perform maximality checking, and diffset propagation to perform fast frequency computation. Systematic experimental comparison with previous work indicates that different methods have varying strengths and weaknesses based on dataset characteristics. We found GenMax to be a highly efficient method to mine the exact set of maximal patterns.
论文关键词:maximal itemsets, frequent itemsets, association rules, data mining, backtracking search
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论文官网地址:https://doi.org/10.1007/s10618-005-0002-x