期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
混和图的特征值分布(英文)
1
作者 龚世才 段汉根 范益政 《数学研究》 CSCD 2006年第2期124-128,共5页
建立了混和图的特征值与匹配数、直径以及拟悬挂点数的关系,推广了简单图上若干关于特征值分布的结论.
关键词 混和图 特征值 匹配数 拟悬挂点
下载PDF
Self-organizing dual clustering considering spatial analysis and hybrid distance measures 被引量:10
2
作者 JIAO LiMin LIU YaoLin ZOU Bin 《Science China Earth Sciences》 SCIE EI CAS 2011年第8期1268-1278,共11页
Dual clustering performs object clustering in both spatial and non-spatial domains that cannot be dealt with well by traditional clustering methods.However,recent dual clustering research has often omitted spatial out... Dual clustering performs object clustering in both spatial and non-spatial domains that cannot be dealt with well by traditional clustering methods.However,recent dual clustering research has often omitted spatial outliers,subjectively determined the weights of hybrid distance measures,and produced diverse clustering results.In this study,we first redefined the dual clustering problem and related concepts to highlight the clustering criteria.We then presented a self-organizing dual clustering algorithm (SDC) based on the self-organizing feature map and certain spatial analysis operations,including the Voronoi diagram and polygon aggregation and amalgamation.The algorithm employs a hybrid distance measure that combines geometric distance and non-spatial similarity,while the clustering spectrum analysis helps to determine the weight of non-spatial similarity in the measure.A case study was conducted on a spatial database of urban land price samples in Wuhan,China.SDC detected spatial outliers and clustered the points into spatially connective and attributively homogenous sub-groups.In particular,SDC revealed zonal areas that describe the actual distribution of land prices but were not demonstrated by other methods.SDC reduced the subjectivity in dual clustering. 展开更多
关键词 dual clustering DATAMINING self-organizing feature map Voronoi diagram
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部