Exploiting Parallelism in Association Rule Mining Algorithms
نویسندگان
چکیده
Association rule mining is one of the major technique of data mining, involves finding of frequent itemsets with minimum support and generating association rule among them with minimum confidence. The task of finding all frequent itemsets for a large datasets requires a lot of computation which can be minimized by exploiting parallelism to the sequential algorithms. In this paper, we provide the preliminaries of basic concepts about association rule mining, different sequential association rule mining algorithms on different hardware platforms and also focus on the challenges in exploiting parallelism to these algorithms. We also discusses up to what extent these challenges e.g. load balancing, efficient memory usage, minimization of communication cost among processors, efficient data and task decomposition etc. are congregate by a given parallel association rule mining algorithm and classifies them accordingly. Although, this survey cannot be complete review of all algorithms, but it provides information that will cover major theoretical issues and can be serve as a reference for both the researchers and the practitioners.
منابع مشابه
New Approaches to Analyze Gasoline Rationing
In this paper, the relation among factors in the road transportation sector from March, 2005 to March, 2011 is analyzed. Most of the previous studies have economical point of view on gasoline consumption. Here, a new approach is proposed in which different data mining techniques are used to extract meaningful relations between the aforementioned factors. The main and dependent factor is gasolin...
متن کاملStudy on the Method of Association Rules Mining Based on Genetic Algorithm and Application in Analysis of Seawater Samples
Based on the data mining research, the data mining based on genetic algorithm method, the genetic algorithm is briefly introduced, while the genetic algorithm based on two important theories and theoretical templates principle implicit parallelism is also discussed. Focuses on the application of genetic algorithms for association rule mining method based on association rule mining, this paper p...
متن کاملOptimizing Membership Functions using Learning Automata for Fuzzy Association Rule Mining
The Transactions in web data often consist of quantitative data, suggesting that fuzzy set theory can be used to represent such data. The time spent by users on each web page is one type of web data, was regarded as a trapezoidal membership function (TMF) and can be used to evaluate user browsing behavior. The quality of mining fuzzy association rules depends on membership functions and since t...
متن کاملFrequent itemset mining on multiprocessor systems
Frequent itemset mining is an important building block in many data mining applications like market basket analysis, recommendation, web-mining, fraud detection, and gene expression analysis. In many of them, the datasets being mined can easily grow up to hundreds of gigabytes or even terabytes of data. Hence, efficient algorithms are required to process such large amounts of data. In recent ye...
متن کاملLarge Scale Data Mining: Challenges and Responses
Data mining over large data-sets is important due to its obvious commercial potential, However, it is also a major challenge due to its computational complexity. Exploiting the inherent parallelism of data mining algorithms provides a direct solution by utilising the large data retrieval and processing power of parallel architectures. In this paper, we present some results of our intensive rese...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2011