DocumentCode
48392
Title
A Survey of Clustering Algorithms for Big Data: Taxonomy and Empirical Analysis
Author
Fahad, Adil ; Alshatri, Najlaa ; Tari, Zahir ; Alamri, Atif ; Khalil, Issa ; Zomaya, Albert Y. ; Foufou, Sebti ; Bouras, Abdelaziz
Author_Institution
Sch. of Comput. Sci. & Inf. Technol., R. Melbourne Inst. of Technol., Melbourne, VIC, Australia
Volume
2
Issue
3
fYear
2014
fDate
Sept. 2014
Firstpage
267
Lastpage
279
Abstract
Clustering algorithms have emerged as an alternative powerful meta-learning tool to accurately analyze the massive volume of data generated by modern applications. In particular, their main goal is to categorize data into clusters such that objects are grouped in the same cluster when they are similar according to specific metrics. There is a vast body of knowledge in the area of clustering and there has been attempts to analyze and categorize them for a larger number of applications. However, one of the major issues in using clustering algorithms for big data that causes confusion amongst practitioners is the lack of consensus in the definition of their properties as well as a lack of formal categorization. With the intention of alleviating these problems, this paper introduces concepts and algorithms related to clustering, a concise survey of existing (clustering) algorithms as well as providing a comparison, both from a theoretical and an empirical perspective. From a theoretical perspective, we developed a categorizing framework based on the main properties pointed out in previous studies. Empirically, we conducted extensive experiments where we compared the most representative algorithm from each of the categories using a large number of real (big) data sets. The effectiveness of the candidate clustering algorithms is measured through a number of internal and external validity metrics, stability, runtime, and scalability tests. In addition, we highlighted the set of clustering algorithms that are the best performing for big data.
Keywords
Big Data; learning (artificial intelligence); pattern clustering; big data; clustering algorithm; meta-learning tool; runtime test; scalability test; stability test; validity metrics; Algorithm design and analysis; Big data; Clustering algorithms; Clustering methods; Neural networks; Partitioning algorithms; Taxonomies; Clustering algorithms; big data; unsupervised learning;
fLanguage
English
Journal_Title
Emerging Topics in Computing, IEEE Transactions on
Publisher
ieee
ISSN
2168-6750
Type
jour
DOI
10.1109/TETC.2014.2330519
Filename
6832486
Link To Document