Discovering association rules that identify relationships among sets of items is an important problem in data mining. It’s a two steps process, the first step finds all frequent itemsets and the second one constructs association rules from these frequent sets. Finding frequent itemsets is computationally the most expensive step in association rules discovery algorithms. Utilizing parallel architectures has been a viable means for improving FIM algorithms performance. We present two FP-growth implementations that take advantage of multi-core processors and utilize new generation Graphic Processing Units (GPU).</p
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...
Frequent-itemset mining is an essential part of the association rule mining process, which has many ...
Frequent itemset mining (FIM) algorithms extract subsets of items that occurs frequently in a collec...
Part 4: Session 4: Multi-core Computing and GPUInternational audienceFrequent Itemset Mining (FIM) i...
Data mining is used to discover Business Intelligence Rules from large transactional database, frequ...
In this paper, we provide an overview of parallel incremental association rule mining, which is one ...
Abstract—The graphics processing unit (GPU) has evolved into a key part of today’s heterogeneous par...
As an important part of discovering association rules, frequent itemsets mining plays a key role in ...
In this paper, we describe GPU-Eclat algorithm, a GPU (General Purpose Graphics Processing Unit) enh...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Abstract- As an important part of discovering association rules, frequent itemsets mining plays a ke...
We propose a novel frequent-pattern tree (FP-tree) structure; our performance study shows that the F...
The main focus of this report is on frequent intra- and inter-transaction itemset mining, specifical...
A b s t r a c t We propose a novel frequent-pattern tree (FP-tree) structure; our performance study ...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...
Frequent-itemset mining is an essential part of the association rule mining process, which has many ...
Frequent itemset mining (FIM) algorithms extract subsets of items that occurs frequently in a collec...
Part 4: Session 4: Multi-core Computing and GPUInternational audienceFrequent Itemset Mining (FIM) i...
Data mining is used to discover Business Intelligence Rules from large transactional database, frequ...
In this paper, we provide an overview of parallel incremental association rule mining, which is one ...
Abstract—The graphics processing unit (GPU) has evolved into a key part of today’s heterogeneous par...
As an important part of discovering association rules, frequent itemsets mining plays a key role in ...
In this paper, we describe GPU-Eclat algorithm, a GPU (General Purpose Graphics Processing Unit) enh...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Abstract- As an important part of discovering association rules, frequent itemsets mining plays a ke...
We propose a novel frequent-pattern tree (FP-tree) structure; our performance study shows that the F...
The main focus of this report is on frequent intra- and inter-transaction itemset mining, specifical...
A b s t r a c t We propose a novel frequent-pattern tree (FP-tree) structure; our performance study ...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...
Frequent-itemset mining is an essential part of the association rule mining process, which has many ...