Frequent pattern mining is an essential data mining task, with a goal of discovering knowledge in the form of repeated patterns. Many efficient pattern mining algorithms have been discovered in the last two decades, yet most do not scale to the type of data we are presented with today, the so-called "Big Data". Scalable parallel algorithms hold the key to solving the problem in this context. In this chapter, we review recent advances in parallel frequent pattern mining, analyzing them through the Big Data lens. We identify three areas as challenges to designing parallel frequent pattern mining algorithms: memory scalability, work partitioning, and load balancing. With these challenges as a frame of reference, we extract and describe key alg...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
The problem of mining frequent sequential patterns (FSPs) has attracted a great deal of research att...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
96 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We implemented parallel algori...
Abstract. When computationally feasible, mining huge databases produces tremendously large numbers o...
96 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We implemented parallel algori...
In this paper, we present a tree-partition algorithm for parallel mining of frequent patterns. Our w...
Efficient mining of frequent patterns from large databases has been an active area of research since...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
The problem of mining frequent sequential patterns (FSPs) has attracted a great deal of research att...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
96 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We implemented parallel algori...
Abstract. When computationally feasible, mining huge databases produces tremendously large numbers o...
96 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.We implemented parallel algori...
In this paper, we present a tree-partition algorithm for parallel mining of frequent patterns. Our w...
Efficient mining of frequent patterns from large databases has been an active area of research since...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Frequent itemset mining is a well studied and important problem in the datamining community. An abun...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
The problem of mining frequent sequential patterns (FSPs) has attracted a great deal of research att...