A Scalable Parallel Algorithm for Self-Organizing Maps with Applicationsto Sparse Data Mining Problems

Data Mining and Knowledge Discovery(1999)

引用 115|浏览0
暂无评分
摘要
We describe a scalable parallel implementation of the self organizing map (SOM) suitable for data-mining applications involving clustering or segmentation against large data sets such as those encountered in the analysis of customer spending patterns. The parallel algorithm is based on the batch SOM formulation in which the neural weights are updated at the end of each pass over the training data. The underlying serial algorithm is enhanced to take advantage of the sparseness often encountered in these data sets. Analysis of a realistic test problem shows that the batch SOM algorithm captures key features observed using the conventional on-line algorithm, with comparable convergence rates.Performance measurements on an SP2 parallel computer are given for two retail data sets and a publicly available set of census data.These results demonstrate essentially linear speedup for the parallel batch SOM algorithm, using both a memory-contained sparse formulation as well as a separate implementation in which the mining data is accessed directly from a parallel file system. We also present visualizations of the census data to illustrate the value of the clustering information obtained via the parallel SOM method.
更多
查看译文
关键词
parallel file system,parallel algorithm,parallel batch SOM algorithm,large data,SP2 parallel computer,mining data,data set,census data,retail data set,parallel SOM method,Self-Organizing Maps,Scalable Parallel Algorithm,Applicationsto Sparse Data Mining
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要