Itemset mining is a well-known exploratory data mining technique used to discover interesting correlations hidden in a data collection. Since it supports different targeted analyses, it is profitably exploited in a wide range of different domains, ranging from network traffic data to medical records. With the increasing amount of generated data, different scalable algorithms have been developed, exploiting the advantages of distributed computing frameworks, such as Apache Hadoop and Spark. This paper reviews Hadoop- and Spark-based scalable algorithms addressing the frequent itemset mining problem in the Big Data domain through both theoretical and experimental comparative analyses. Since the itemset mining task is computationally expensive...
In big data analysis, frequent itemsets mining plays a key role in mining associations, correlations...
International audienceData analytics in general, and data mining primitives in particular , are a ma...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
Frequent Itemset Mining is a popular data mining task with the aim of discovering frequently co-occu...
Traditional data mining tools, developed to extract actionable knowledge from data, demonstrated to ...
Frequent Itemset Mining is an important data mining task in real-world applications. Distributed par...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
In practice, single item support cannot comprehensively address the complexity of items in large dat...
This thesis addresses the issue of enhancing the scalability of data mining techniques, with specifi...
Abstract — Frequent Itemset Mining is one of the classical data mining problems in most of the data ...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
Abstract: In the current scenario there has been growing attention in the area of distributed enviro...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
In big data analysis, frequent itemsets mining plays a key role in mining associations, correlations...
International audienceData analytics in general, and data mining primitives in particular , are a ma...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
Frequent Itemset Mining is a popular data mining task with the aim of discovering frequently co-occu...
Traditional data mining tools, developed to extract actionable knowledge from data, demonstrated to ...
Frequent Itemset Mining is an important data mining task in real-world applications. Distributed par...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
In practice, single item support cannot comprehensively address the complexity of items in large dat...
This thesis addresses the issue of enhancing the scalability of data mining techniques, with specifi...
Abstract — Frequent Itemset Mining is one of the classical data mining problems in most of the data ...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
Abstract: In the current scenario there has been growing attention in the area of distributed enviro...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
In big data analysis, frequent itemsets mining plays a key role in mining associations, correlations...
International audienceData analytics in general, and data mining primitives in particular , are a ma...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...