Title
Big data clustering with varied density based on MapReduce
Abstract
The DBSCAN algorithm is a prevalent method of density-based clustering algorithms, the most important feature of which is the ability to detect arbitrary shapes and varied clusters and noise data. Nevertheless, this algorithm faces a number of challenges, including failure to find clusters of varied densities. On the other hand, with the rapid development of the information age, plenty of data are produced every day, such that a single machine alone cannot process this volume of data; hence, new technologies are required to store and extract information from this volume of data. A large volume of data that is beyond the capabilities of existing software is called Big data. In this paper, we have attempted to introduce a new algorithm for clustering big data with varied density using a Hadoop platform running MapReduce. The main idea of this research is the use of local density to find each point’s density. This strategy can avoid the situation of connecting clusters with varying densities. The proposed algorithm is implemented and compared with other algorithms using the MapReduce paradigm and shows the best varying density clustering capability and scalability.
Year
DOI
Venue
2019
10.1186/s40537-019-0236-x
Journal of Big Data
Keywords
DocType
Volume
Map-Reduce, Density-based clustering, Big data
Journal
6
Issue
ISSN
Citations 
1
2196-1115
1
PageRank 
References 
Authors
0.38
0
5