作者
Ankur Kaneriya, Madhu Shukla
发表日期
2015/3/19
研讨会论文
2015 international conference on advances in computer engineering and applications
页码范围
586-590
出版商
IEEE
简介
Data Stream mining has large scope due to their usage in vice variety of application and business purpose. It provides the meaning full usage information which use full to take decision and also for planning purpose. According to application needs on particular parameter consideration there will be change in clustering method use in a stream Data mining. The purpose behind survey paper is explore the widely use clustering method StreamKM++ beneficial over the different clustering method and resolve issues of traditional clustering. Also contain different clustering method like hierarchical, density base, Partitioning Method study, Parameter and their operational methodology. BIRCH is faster than StreamKM++ but output of it not efficient and same way compare it with StreamLS, which partitions input data stream into chunk and clustering each chunk base on local search. Outcome of that is quality comparable …
引用总数
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学术搜索中的文章
A Kaneriya, M Shukla - 2015 international conference on advances in …, 2015