期刊
  出版年
  关键词
结果中检索 Open Search
Please wait a minute...
选择: 显示/隐藏图片
1. MBGM: A Graph-Mining Tool Based on MapReduce and BSP
Zhenjiang Dong, Lixia Liu, Bin Wu, and Yang Liu
ZTE Communications    2014, 12 (4): 16-22.   DOI: DOI:10.3969/j.issn.1673-5188.2014.04.003
摘要57)      PDF (393KB)(79)    收藏
This paper proposes an analytical mining tool for big graph data based on MapReduce and bulk synchronous parallel (BSP) computing model. The tool is named Mapreduce and BSP based Graph-mining tool (MBGM). The core of this mining system are four sets of parallel graph-mining algorithms programmed in the BSP parallel model and one set of data extraction-transformation-loading (ETL) algorithms implemented in MapReduce. To invoke these algorithm sets, we designed a workflow engine which optimized for cloud computing. Finally, a well-designed data management function enables users to view, delete and input data in the Hadoop distributed file system (HDFS). Experiments on artificial data show that the components of graph-mining algorithm in MBGM are efficient.
相关文章 | 多维度评价