Litcius/Paper detail

SWEclat: a frequent itemset mining algorithm over streaming data using Spark Streaming

Wen Xiao, Juan Hu

2020The Journal of Supercomputing37 citationsDOIOpen Access PDF

Abstract

Abstract Finding frequent itemsets in a continuous streaming data is an important data mining task which is widely used in network monitoring, Internet of Things data analysis and so on. In the era of big data, it is necessary to develop a distributed frequent itemset mining algorithm to meet the needs of massive streaming data processing. Apache Spark is a unified analytic engine for massive data processing which has been successfully used in many data mining fields. In this paper, we propose a distributed algorithm for mining frequent itemsets over massive streaming data named SWEclat. The algorithm uses sliding window to process streaming data and uses vertical data structure to store the dataset in the sliding window. This algorithm is implemented by Apache Spark and uses Spark RDD to store streaming data and dataset in vertical data format, so as to divide these RDDs into partitions for distributed processing. Experimental results show that SWEclat algorithm has good acceleration, parallel scalability and load balancing.

Topics & Concepts

SPARK (programming language)Computer scienceScalabilityStreaming dataSliding window protocolBig dataData miningProcess (computing)Data processingAlgorithmDatabaseWindow (computing)Operating systemProgramming languageData Mining Algorithms and ApplicationsImbalanced Data Classification TechniquesData Stream Mining Techniques