AbstractIn this paper, we focus on the problem of mining the approximate frequent itemsets. To improve the performance, we employ a sampling method, in which a heuristic rule is used to dynamically determine the sampling rate. Two parameters are introduced to implement the rule. Also, we maintain the data synopsis in an in-memory data structure named SFIHtree to speed up the runtime. Our proposed algorithm SFIH can be efficiently performed over this tree. We conducted extensive experiments and showed that the mining performance can be improved significantly with a high accuracy when we used reasonable parameters
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Frequent Itemsets mining is well explored for various data types, and its computational complexity i...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
AbstractIn this paper, we focus on the problem of mining the approximate frequent itemsets. To impro...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
With the large amount of data collected in various applications, data mining has become an essential...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
The efciency of frequent itemset mining algorithms is determined mainly by three factors: the way ca...
International audienceFrequent Itemsets mining is a key concept in Association Rule Mining task, it ...
In this paper, we are an overview of already presents frequent item set mining algorithms. In these ...
In this paper, we are an overview of already presents frequent item set mining algorithms. In these ...
Frequent pattern mining attracts extensive research interests over the past two decades: including m...
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Frequent Itemsets mining is well explored for various data types, and its computational complexity i...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
AbstractIn this paper, we focus on the problem of mining the approximate frequent itemsets. To impro...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
With the large amount of data collected in various applications, data mining has become an essential...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
The efciency of frequent itemset mining algorithms is determined mainly by three factors: the way ca...
International audienceFrequent Itemsets mining is a key concept in Association Rule Mining task, it ...
In this paper, we are an overview of already presents frequent item set mining algorithms. In these ...
In this paper, we are an overview of already presents frequent item set mining algorithms. In these ...
Frequent pattern mining attracts extensive research interests over the past two decades: including m...
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Frequent Itemsets mining is well explored for various data types, and its computational complexity i...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...