Abstract. This thesis aims to discuss the problems now existing in mining probabilistic of MapReduce Apriori, and to put forward an algorithm about mining probabilistic frequent itemsets based on cloud computing. This algorithm proposes to reduce the quantity of candidate item sets by the strategy of designing to decrease candidate item sets, and divide data sets and candidate item sets into related nodes in order to minimize candidate item sets. By compressing the transaction set to accomplish connecting optimization, it can avoid producing massive alternatives item sets in the process of self-link to improve the operation efficiency of algorithm
Abstract — Association rules can mine the relevant evidence of computer crime from the massive data ...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
AbstractDue to the advancement in internet technologies the volume of data is tremendously increasin...
The purpose of association mining is to find the valuable relationships between data sets. The prere...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
By taking advantages of cloud computing technology and Internet of Things (IoT), an improved approac...
Abstract: Organizations are more interested in the interesting data rather than the bulk of data. So...
Finding all of the frequent itemsets is a basic work in data mining. For more than 20 years from the...
Abstract- Frequent Itemset Mining (FIM) is one of the most well-known method to use in extract knowl...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
For every sector there is generation of large amount of data, it’s very difficult and time taking to...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Abstract — Association rules can mine the relevant evidence of computer crime from the massive data ...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
AbstractDue to the advancement in internet technologies the volume of data is tremendously increasin...
The purpose of association mining is to find the valuable relationships between data sets. The prere...
Due to the rapid growth of data from different sources in organizations, the traditional tools and t...
By taking advantages of cloud computing technology and Internet of Things (IoT), an improved approac...
Abstract: Organizations are more interested in the interesting data rather than the bulk of data. So...
Finding all of the frequent itemsets is a basic work in data mining. For more than 20 years from the...
Abstract- Frequent Itemset Mining (FIM) is one of the most well-known method to use in extract knowl...
Recently, several algorithms based on the MapReduce framework have been proposed for frequent patter...
For every sector there is generation of large amount of data, it’s very difficult and time taking to...
We present a survey of the most important algorithms that have been pro- posed in the context of the...
International audienceDespite crucial recent advances, the problem of frequent itemset mining is sti...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Abstract — Association rules can mine the relevant evidence of computer crime from the massive data ...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...