影响因子:3.476
     DOI码:10.1109/ACCESS.2019.2933361
    
    
     发表刊物:IEEE Access
    
    
     关键字:classification; Eclat algorithm; Fuzzy association rules; incremental; regression
     摘要:The aim of mining fuzzy association rules is to find both the association and the casual relationships between the itemsets. With the arrival of dynamic data, the fuzzy association rules should be updated in real time. However, most of the existing algorithms must remine the updated database and can only be applied in classification. This paper proposes an incremental fuzzy association rule mining algorithm to solve classification and regression problems. First, the sliding window is adopted to divide the fuzzy dataset. Second, the dynamic fuzzy variable selection algorithm is adopted to select variables for reducing the search space of the fuzzy association rule mining. Finally, in each sliding window, the result of variable selection is used to incrementally mine the causal fuzzy association rules with the fuzzy Eclat algorithm. When new data are added, the process judges whether concept drift occurs, and if so, the rule set is updated; otherwise, the original rule set is still applied. The weights of the rules are calculated to find the evolving relationship. The simulation result shows that this algorithm can improve accuracy and efficiency.
    
    
    
     论文类型:期刊论文
    
     论文编号:8788644
     学科门类:工学
    
     文献类型:J
     卷号:7
    
     页面范围:121095 - 121110
    
     ISSN号:21693536
     是否译文:否
    
     发表时间:2019-01-01
     收录刊物:SCI
     发布期刊链接:https://ieeexplore.ieee.org/abstract/document/8788644
       

