The Map-Reduce (MR) framework has become a popular framework for developing new parallel algorithms for Big Data. Efficient algorithms for data mining of big data and distributed databases has become an important problem. In this paper we focus on algorithms producing association rules and frequent itemsets. After reviewing the most recent algorithms that perform this task within the MR framework, we present two new algorithms: one algorithm for producing closed frequent itemsets, and the second one for producing frequent itemsets when the database is updated and new data is added to the old database. Both algorithms include novel optimizations which are suitable to the MR framework, as well as to other parallel architectures. A detailed ex...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
In today’s world, the shopping is the largest fashionable trend where the transaction processing is ...
Mining for association rules involves extracting pat-terns from large database and inferring useful ...
Data Mining is one of the central activities associated with understanding and exploiting the world...
Data mining is the exploration and analysis of large quantities of data to discover meaningful patte...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
Mining for association rules between items in a large database of sales transactions has been descri...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
In this paper, we provide an overview of parallel incremental association rule mining, which is one ...
AbstractNow days due to rapid growth of data in organizations, extensive data processing is a centra...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
In today’s world, the shopping is the largest fashionable trend where the transaction processing is ...
Mining for association rules involves extracting pat-terns from large database and inferring useful ...
Data Mining is one of the central activities associated with understanding and exploiting the world...
Data mining is the exploration and analysis of large quantities of data to discover meaningful patte...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
Mining for association rules between items in a large database of sales transactions has been descri...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
In this paper, we provide an overview of parallel incremental association rule mining, which is one ...
AbstractNow days due to rapid growth of data in organizations, extensive data processing is a centra...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...