PARALLEL AND DISTRIBUTED ASSOCIATION RULE MINING ALGORITHMS: A RECENT SURVEY

Journal Title: Information Management and Computer Science (IMCS) - Year 2019, Vol 2, Issue 1

Abstract

Data investigation is an essential key factor now a days due to rapidly growing electronic technology. It generates a large number of transactional data logs from a range of sources devices. Parallel and distributed computing is a useful approach for enhancing the data mining process. The aim of this research is to present a systematic review of parallel association rule mining (PARM) and distributed association rule mining (DARM) approaches. We have observed that the parallelized nature of Apriori, Equivalence class, Hadoop (MapReduce), and Spark proves to be very efficient in PARM and DARM environment. We conclude that this comprehensive review, references cited in this article will convey foremost hypothetical issues and a guideline to the researcher an interesting research direction. The most important hypothetical issue and challenges include the large size of databases, dimensionality of data, indexing schemes of data in the database, data skewness, database location, load balancing strategies, methods of adaptability in incremental databases and orientation of the database.

Authors and Affiliations

Sudarsan Biswas, Neepa Biswas, Kartick Chandra Mondal

Keywords

Related Articles

A SHORT COMMUNICATION ON REVERSE LOGISTICS ROLE IN THE SUPPLY CHAIN

With the emergence of e-commerce and rising digital literacy among the consumers, the global logistics industry has been changing significantly in the recent years. Factors such as rising disposable incomes, dual-income...

A LOOK AT MILLENNIAL ATTITUDES TOWARD AI UTILITY IN THE CLASS

During the past several decades, Artificial Intelligence (AI) has developed rapidly and derived many useful utilities that could be used to satisfy the needs of society. One major area AI can provide relieve is in educat...

A DESIGN OF HEART RATE MONITOR BRACELET BASED ON BP NEURAL NE TWORK

Article History: Through BP neural network self-learning, the wearable heart rate test bracelet is self-learned to determine the state of the heart in the current time period, and to pre-warn the abnormality of the heart...

OPTIMAL METHODOLOGIES

The exploration of SMPs is a confusing quagmire. After years of compelling research into write-back caches, we prove the construction of Markov models. In this paper, we propose a novel methodology for the refinement of...

COMMERCIAL COMPLEX INTELLIGENCE AND PROGRAM RESEARCH

In view of the technical characteristics, design methods and mainstream application scenarios of the commercial complex, this paper points out the main design solutions of commercial complex intelligent deployment in com...

Download PDF file
  • EP ID EP638407
  • DOI 10.26480/imcs.01.2019.15.24
  • Views 84
  • Downloads 0

How To Cite

Sudarsan Biswas, Neepa Biswas, Kartick Chandra Mondal (2019). PARALLEL AND DISTRIBUTED ASSOCIATION RULE MINING ALGORITHMS: A RECENT SURVEY. Information Management and Computer Science (IMCS), 2(1), 15-24. https://europub.co.uk./articles/-A-638407