In recent years, knowledge discovery in databases provides a powerful capability to discover meaningful and useful information. For numerous real-life applications, frequent pattern mining and association rule mining have been extensively studied. In traditional mining algorithms, data are centralized and memory-resident. As a result of the large amount of data, bandwidth limitation, and energy limitations when applying these methods to distributed databases, especially in this era of big data, the performance is not effective enough. Hence, data mining on distributed environments has emerged as an important research area. To improve the performance, we propose a set of algorithms based on FP growth that discover FPs that are capable of pro...
There are lots of data mining tasks such as association rule, clustering, classification, regression...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
Data mining is a set of methods used to mine hidden information from data. It mainly includes freque...
In this article, we present a new approach for frequent pattern mining (FPM) that runs fast for both...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
International audienceFrequent itemset mining (FIM) is one of the fundamental cornerstones in data m...
International audienceFrequent itemset mining presents one of the fundamental building blocks in dat...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Abstract—With the rapid growth of information technology and in many business applications, mining f...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
Frequent pattern mining is an essential data mining task, with a goal of discovering knowledge in th...
There are lots of data mining tasks such as association rule, clustering, classification, regression...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
Data mining is a set of methods used to mine hidden information from data. It mainly includes freque...
In this article, we present a new approach for frequent pattern mining (FPM) that runs fast for both...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
International audienceFrequent itemset mining (FIM) is one of the fundamental cornerstones in data m...
International audienceFrequent itemset mining presents one of the fundamental building blocks in dat...
Itemset mining is a well-known exploratory data mining technique used to discover interesting correl...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
Frequent Itemsets Mining (FIM) is a fundamental mining model and plays an important role in Data Min...
Abstract—With the rapid growth of information technology and in many business applications, mining f...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
Frequent pattern mining is an essential data mining task, with a goal of discovering knowledge in th...
There are lots of data mining tasks such as association rule, clustering, classification, regression...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Abstract Traditional methods for data mining typically make the assumption that data is centralized ...