This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.There is growing evidence that integrating classification and association rule mining can produce more efficient and accurate classifiers than traditional techniques. This thesis introduces a new MapReduce based association rule miner for extracting strong rules from large datasets. This miner is used later to develop a new large scale classifier. Also new MapReduce simulator was developed to evaluate the scalability of proposed algorithms on MapReduce clusters. The developed associative rule miner inherits the MapReduce scalability to huge datasets and to thousands of processing nodes. For finding frequent itemsets, it uses hybrid approach...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
Social networking sites are the virtual community for sharing information among the people It raise...
Associative classifiers have proven to be very effective in classification problems. Unfortunately, ...
The vast amounts of data generated, exchanged and consumed on a daily basis by contemporary networks...
Big Data mining is an analytic process used to dis-cover the hidden knowledge and patterns from a ma...
Frequent Itemsets and Association Rules Mining (FIM) is a key task in knowledge discovery from data....
Import 02/11/2016Background: Big Data mining is an analytic process utilized to discover the hidden ...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
Many algorithms have emerged to address the discovery of quantitative association rules from dataset...
Big data is a new trend and big data analytics is gaining more importance among the data analyzers. ...
Associative Classification (AC) in data mining is a rule based approach that uses association rule t...
Increasing development in information and communication technology leads to the generation of large ...
Traditional classification techniques such as decision trees and RIPPER use heuristic search methods...
Abstract Extraction of valuable data from extensive datasets is a standout amongst the most vital ex...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
Social networking sites are the virtual community for sharing information among the people It raise...
Associative classifiers have proven to be very effective in classification problems. Unfortunately, ...
The vast amounts of data generated, exchanged and consumed on a daily basis by contemporary networks...
Big Data mining is an analytic process used to dis-cover the hidden knowledge and patterns from a ma...
Frequent Itemsets and Association Rules Mining (FIM) is a key task in knowledge discovery from data....
Import 02/11/2016Background: Big Data mining is an analytic process utilized to discover the hidden ...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
Many algorithms have emerged to address the discovery of quantitative association rules from dataset...
Big data is a new trend and big data analytics is gaining more importance among the data analyzers. ...
Associative Classification (AC) in data mining is a rule based approach that uses association rule t...
Increasing development in information and communication technology leads to the generation of large ...
Traditional classification techniques such as decision trees and RIPPER use heuristic search methods...
Abstract Extraction of valuable data from extensive datasets is a standout amongst the most vital ex...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
Social networking sites are the virtual community for sharing information among the people It raise...