Traditional data mining tools, developed to extract actionable knowledge from data, demonstrated to be inadequate to process the huge amount of data produced nowadays. Even the most popular algorithms related to Frequent Itemset Mining, an exploratory data analysis technique used to discover frequent items co-occurrences in a transactional dataset, are inefficient with larger and more complex data. As a consequence, many parallel algorithms have been developed, based on modern frameworks able to leverage distributed computation in commodity clusters of machines (e.g., Apache Hadoop, Apache Spark). However, frequent itemset mining parallelization is far from trivial. The search-space exploration, on which all the techniques are based, is not...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
Frequent itemset mining is an important building block in many data mining applications like market ...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
Traditional data mining tools, developed to extract actionable knowledge from data, demonstrated to ...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
In today’s world, large volumes of data are being continuously generated by many scientific applicat...
Frequent closed itemset mining is among the most complex exploratory techniques in data mining, and ...
Frequent itemset mining is an exploratory data mining technique that has fruitfully been exploited t...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
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...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
Funding for open access publishing: Universidad de Gran- ada/CBUA. The research reported in this pa...
Frequent Itemset Mining is a popular data mining task with the aim of discovering frequently co-occu...
Abstract — Frequent Itemset Mining is one of the classical data mining problems in most of the data ...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
Frequent itemset mining is an important building block in many data mining applications like market ...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...
Traditional data mining tools, developed to extract actionable knowledge from data, demonstrated to ...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
In today’s world, large volumes of data are being continuously generated by many scientific applicat...
Frequent closed itemset mining is among the most complex exploratory techniques in data mining, and ...
Frequent itemset mining is an exploratory data mining technique that has fruitfully been exploited t...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
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...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
Funding for open access publishing: Universidad de Gran- ada/CBUA. The research reported in this pa...
Frequent Itemset Mining is a popular data mining task with the aim of discovering frequently co-occu...
Abstract — Frequent Itemset Mining is one of the classical data mining problems in most of the data ...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
Frequent itemset mining is an important building block in many data mining applications like market ...
Traditional methods for frequent itemset mining typically assume that data is centralized and static...