作者
Adil Fahad, Najlaa Alshatri, Zahir Tari, Abdullah Alamri, Ibrahim Khalil, Albert Y Zomaya, Sebti Foufou, Abdelaziz Bouras
发表日期
2014/6/12
期刊
IEEE transactions on emerging topics in computing
卷号
2
期号
3
页码范围
267-279
出版商
IEEE
简介
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 …
引用总数
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学术搜索中的文章
A Fahad, N Alshatri, Z Tari, A Alamri, I Khalil… - IEEE transactions on emerging topics in computing, 2014